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Friday, April 10
 

9:28am GMT+07

Opening Remarks
Friday April 10, 2026 9:28am - 9:30am GMT+07

Invited Guest & Session Chair
avatar for Prof. Michael David

Prof. Michael David

Associate Professor, Federal University of Technology Minna, Nigeria
avatar for Dr. Sandeep A. Thorat

Dr. Sandeep A. Thorat

Controller of Examination, Government College of Engineering Karad, Maharashtra, India

Friday April 10, 2026 9:28am - 9:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

A Design and Study of a DTMF Technology Enabled Water Surface Cleaning Robot
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Senthilkumar Selvaraj, Suresh kumar Chiluka, Swetha D
Abstract - This paper presents the design and construction of a robot that cleans rivers. The robot is designed to be used in situations when it is necessary to remove floating rubbish from bodies of water. Conventional waste-collection techniques, like trash skimmers, boats, and hand cleaning, are usually used close to the edges of rivers, lakes, or ponds. These methods are frequently dangerous, time-consuming, and inconvenient. A water-surface cleaning robot has been created to overcome these constraints and remove trash more effectively, securely, and easily. Using commands sent from a cell phone, the robot moves in different directions while operating on the water's surface. When a call is placed to the phone that is attached to the robot's DTMF decoder, the controller processes the tone signals it receives and then adjusts the motors. A filter mechanism installed on roller belts is used to catch floating material. Waste particles are lifted and collected by the filter setup as the chain assembly moves in response to the motor's rotation. After that, the gathered material is placed in a special storage tank, allowing the water's surface to be continuously and successfully cleaned.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

A Lightweight Zero-Trust Security Framework for IoT Systems Using ECC Authentication, Trust Scoring, and Machine Learning–Based Attack Detection
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Reena Pal, Premal Patel
Abstract - The quantum computing potential to transform the conventional public key cryptosystems, specifically when they are being implemented on the structure of a cloud, and are operating on sensitive data is especially problematic. In the current paper, we introduce quantumresistant, fully homomorphic encryption (FHE) new homomorphic encryption scheme, to offer secure and scalable cloud data encryption. We solve Learning With Errors (LWE) problems and Ring-LWE problems and include dynamic key management and re encryption protocols to improve better security of multi-users [14]. The results of our Largescale simulations on a cloud testbed show that our design actually has the desired throughput and resource efficiency under horizontal scaling [10] although 60-70% addition of additional latency is noticeable as compared to non-BFT systems. Key to Practicality The paper will offer the much-needed trade-offs of high performance and high security assurances [12].
Paper Presenter
avatar for Reena Pal
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

A SIFT-Based Classification Method for Traditional Japanese Stencil Images
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Yuuki Ario, Yuyu Araki, Hiroshi Sakamoto
Abstract - Crowd analysis has become a critical component of modern urban and smart surveillance systems, where effective monitoring of densely populated public areas is essential for resource management, emergency response, and public safety. YOLO-based models are popular for detecting a person or an object. In this study, we present a comprehensive objective evaluation analysis of state-of-the-art object detection architectures—YOLOv5, YOLOv8, and YOLOv11. We have implemented YOLO models for detecting groups of people as integrated entities to enable crowd classification based on group size, including individuals, small groups, and large crowds. The evaluation was con-ducted using four diverse benchmark datasets: VSCrowd, Crowd Mall, Crowd11, and NWPU-Crowd, with all images annotated using LabelImg. Each model was rigorously trained and tested under consistent conditions. Experimental results reveal that on the VSCrowd dataset, YOLOv5s achieved an [email protected] of 0.454, while YOLOv5l slightly improved this to 0.459. YOLOv8m demonstrated high performance with an [email protected] of 0.530. On Crowd Dataset, YOLOv5m achieved an [email protected] of 0.300, YOLOv8m obtained 0.306, and YOLOv11m achieved 0.302. These results indicate that newer YOLO architectures provide enhanced detection capabilities in highly crowded scenes, exhibiting better generalization, robustness, and adaptability for real-world crowd analysis applications.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

Comparative Overview of Deep Learning Architectures for Disease Detection in Medicinal Plants
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Sakthi Saranya.S, W.Rose Varuna
Abstract - Agriculture is one of the most important industries that provides for human basic need. To identify medicinal plant diseases using traditional methods, it will take long time. Medicinal Plants such as, Tulsi, Aloe vera, Mint and Ashwagandha play a crucial role in both ancient and modern systems. These plant images were taken into this work. Early identification of diseases in these plants is most important to maintain their medicinal benefit as well as economic value. This study investigates and compares five deep learning architectures, namely ResNet50, DenseNet121, EfficientNet-B0, InceptionV3 and CNN-for classifying leaf diseases in medicinal plants. Moreover, several performance metrics are used for the evaluation of these architectures. This work mainly focuses on determining the most suitable deep learning model for detecting the diseases in medicinal plants.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

Evaluating Explanation Consistency of Explainable Machine Learning Models for Heart Disease Risk Prediction
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Kari Sai Vardhan, Maram Ramakrishna Reddy, Kore Akhil, Modugula Pavan Kumar Reddy, Aaskaran Bishnoi
Abstract - This study evaluates the effectiveness of student-led mobile-first web design implementation for Small and Medium-sized Enterprises (SMEs) using the Bootstrap framework. By applying a project-based information system development model, this study analyzes the technical performance of websites, particularly in terms of layout responsiveness and system metrics such as PageSpeed. A mixed-methods approach was used to collect quantitative data from technical evaluations and qualitative data from student and client feedback. The results indicate that these student-led projects successfully produced highly responsive and high performing websites, significantly enhancing the digital presence of SMEs. The findings underscore the pedagogical efficacy of project-based learning in equipping students with industry-relevant competencies and practical skills in information system development, while simultaneously sup-porting the digital transformation of SMEs.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

Hybrid AI Framework for Smart Energy Grids: DRL-Based Control with Solar Fault Detection
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Kalyani Ghuge, Dhruv Battawar, Om Bhoye, Suhani Buche, Adithiya Anantharaman, Anvay Bavdhankar
Abstract - For the integration of solar systems within the power grid, there is the requirement for smarter systems that are capable of not only detecting faults but also optimizing their performance. The current paper introduces an innovative hybrid method that focuses on the detection of solar thermal faults and adaptive grid control, where the challenge had existed in the separation of the two aspects. This is achieved through the use of a deep learning U-Net model, where different kinds of solar panel fault types, such as single and multi hotspots, are detected from grayscale thermal images. The different kinds of fault types identified are used as a reinforcement learning approach (PPO), where decisions regarding safe and efficient use of the grid are made while considering fault awareness. Higher priority is granted to critical fault types through rewards that use penalties. It also comes with an immediate safety function to isolate faulty panels with zero delay for smooth and efficient function of the solar energy grid.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

SELF-HEALING REAL-TIME OPERATING SYSTEMS USING REINFORCEMENT LEARNING-BASED RECOVERY POLICIES
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Azad Mohammed Shaik
Abstract - A real-time operating system (RTOS) should be able to recover from interruptions. Since RTOS systems are used in safety-critical environments, this function is essential for ensuring system availability and reliability. However, while many of the current anomaly detection techniques can detect faults, they do not provide any means for recovery. Therefore, in this paper, I propose a self-repairing RTOS framework that utilizes reinforcement learning (RL) to automatically select the best course of action to take when an anomalous event arises. I propose a Q-Learning agent that learns to recover from six types of common faults, including: sensor degradation, stuck sensor, priority inversion, memory leaks, sporadic overloads, and task starvation. The framework is built on FreeRTOS, and the agent utilizes an 8-dimensional state space and the six different types of recovery options available for each fault. The overall success rate of the system was 99.2 % after 5,000 training episodes, with average success rates of 98.0 % and 99.9 % when handling individual faults. The RL agent completely prevented system crashes and returned the system to normal operation within an average of 0.06 ms after an interruption occurred. The training results provide strong evidence that the model learned to operate effectively and consistently, with its success rate improving from 97.0 % during early training stages to 100 % after training was completed. Therefore, this study demonstrates a practical, production-ready method to implement autonomous fault recoveries in RTOSs in automotive applications. To our knowledge, this is the first successful implementation of RL for autonomous, self-repairing behaviors in this area.
Paper Presenter
avatar for Azad Mohammed Shaik

Azad Mohammed Shaik

BSWE Platform Design Engineer, Stellantis, United States

Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

The EPIC-E Framework: A Multi-Dimensional Model for Evaluating the Effectiveness of Dynamic Infographics in Digital News Visualization
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Muchlis Almubaraq, Mohd Norasri Ismail, Norhalina Senan, Larisang, Mutiara Ayu Mawaddah
Abstract - Conventional recipe formats interrupt cooking workflows by requiring repeated attention shifts to external devices. This paper presents Beyond the Cookbook, a Mixed Reality (MR) cooking assistant developed for Meta Quest headsets. The system delivers spatially anchored, context-aware instructions using persistent holographic overlays, synchronized narration, and multimodal interaction including voice commands, controller input, and hand-tracking gestures. By integrating passthrough MR and spatial mapping, the assistant enables hands-free and hygienic guidance directly within the user’s kitchen environment. A usability study with twenty-one participants demonstrates high interaction reliability, instructional clarity, and user confidence. The results validate the feasibility of MR-based procedural learning support in domestic settings.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

Usability and Accessibility on the Website of the Inclusion, Social Equity and Gender Unit of the Technical University of Manabí
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Maricela Pinargote-Ortega, Marely del Rosario Cruz Felipe, Carlos Manuel Lucas Aragundi, Iter Alexander Posligua Solorzano
Abstract - Open data is often associated with objectives linked to fostering innovation and economic growth, political accountability and democratic participation, and public sector efficiency. However, data privacy has been frequently cited as a challenge for open data publication and processing. This paper uses a 9780-row dataset from the 2025 community engagement survey of the Philippine National Police Regional Office 5 to synthesize a privacy-preserving dataset using natural language processing and the Laplace mechanism with a total Privacy Loss Budget (PLB) value of 1. The text dataset fields with the highest privacy risk were replaced with generated topic models and corresponding overall sentiment values. The dataset fields were then categorized into four blocks, grouping variables that require correlations to be preserved. Noise was added to the four blocks using the Laplace mechanism, generating a privacy-preserved synthetic query robust to de-anonymization attacks. The synthesized dataset shows minimal distortion from the original dataset, with mean shifts of less than 0.25, and preserving key variable correlations, while significantly increasing data subject privacy. End-user validation confirmed that the synthetic dataset is suitable for both data sharing and joint processing without sacrificing the accuracy of analysis results. This study demonstrated that a differentially private synthetic data generation pipeline combining natural language processing and the Laplace mechanism (ε = 1) can substantially enhance data subject privacy while preserving the analytical utility of a real-world public sector survey dataset.
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

9:30am GMT+07

WaveTrust: Trust-Based Reinforced Routing Protocol against Malicious Node Influence in Underwater Sensor Environments
Friday April 10, 2026 9:30am - 11:30am GMT+07
Authors - Sona Ravindran, K Nattar Kannan
Abstract - This research examines the transfer learning deep learning models in multimodal human activity recognition based on wearable sensor data. Raw IMU signals are converted to Gramian Angular Field (GAF) images to improve the feature representation and tested on WISDM and PAMAP2 datasets of 18 activity classes. Five CNN models, namely VGG16, MobileNetV2, ResNet50, DenseNet121, and EfficientNetB0, are trained and evaluated in the same conditions and measured by classification accuracy, statistical significance, and computation efficiency. GAF representations are always better than raw signals. DenseNet121 and ResNet50 have 99% accuracy, VGG16 and MobileNetV2 perform competitively and EfficientNetB0 performs worse. Most of the differences in performance are statistically significant (p < 0.05).
Paper Presenter
Friday April 10, 2026 9:30am - 11:30am GMT+07
Virtual Room A Bangkok, Thailand

11:30am GMT+07

Session Chair Concluding Remarks
Friday April 10, 2026 11:30am - 11:32am GMT+07

Invited Guest & Session Chair
avatar for Prof. Michael David

Prof. Michael David

Associate Professor, Federal University of Technology Minna, Nigeria
avatar for Dr. Sandeep A. Thorat

Dr. Sandeep A. Thorat

Controller of Examination, Government College of Engineering Karad, Maharashtra, India

Friday April 10, 2026 11:30am - 11:32am GMT+07
Virtual Room A Bangkok, Thailand

11:32am GMT+07

Session Closing and Information To Authors
Friday April 10, 2026 11:32am - 11:35am GMT+07

Moderator
Friday April 10, 2026 11:32am - 11:35am GMT+07
Virtual Room A Bangkok, Thailand

12:13pm GMT+07

Opening Remarks
Friday April 10, 2026 12:13pm - 12:15pm GMT+07

Invited Guest & Session Chair
avatar for Dr. Prashant Suryavanshi

Dr. Prashant Suryavanshi

Principal, Hon Shri Babanrao Pachpute Vichardhara Trust's, Parikrama Polytechnic Kashti. Maharashtra, India.

avatar for Prof. Reena Satpute

Prof. Reena Satpute

Assistant Professor, Faculty of Science and Technology, Datta Meghe Institute of Higher Education & Research (Deemed to be University), Maharashtra, India
Friday April 10, 2026 12:13pm - 12:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

A REVIEW ON FRAMEWORK FOR DETECTION AND PREVENTION OF EMAIL PHISHING ATTACKS
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Morveen Bamania, Anilkumar Patel, Yassir Farooqui
Abstract - Digital image manipulation has become sophisticated day by day with the help of advanced editing tools. This posing significant challenges to image authenticity verification and raising a critical concern in the field of legal proceedings, social harmony, scientific publications, forensic and law enforcement, healthcare and journalism. In this paper we implement a unique and novel approach for the detection of image forgery. We use Convolutional Autoencoder (CAE) combined with Error Level Analysis (ELA). Our proposed preprocessing pipeline follows the sequence: resize the input image and pass through ELA apply denoise method. Where Gaussian denoising is strategically applied to the ELA output rather than the original image to preserve forgery artifacts while reducing noise. The CAE architecture consists of a four-block encoder that compresses input images into a 128- dimensional latent space, a symmetric decoder for reconstruction, and a fully connected classifier for binary forgery detection. The model is trained using a combined loss function. One is Mean Squared Error (MSE). It helps for reconstruction. The other one is Binary Cross- Entropy (BCE). It improves its ability to correctly classify. Experimental evaluation on the CASIA v2.0 dataset demonstrates the effectiveness of our approach. It is achieving competitive accuracy, precision, recall, and F1-score metrics. The proposed method successfully identifies both copy-move and splicing forgeries. It identifies the forgeries by analyzing compression artifact inconsistencies revealed through ELA.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

AI-Driven Penalty Performance Analysis System: A Multi-Modal Explainable AI Approach for Football Strategy
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Albert Manamela, Tevin Moodley
Abstract - Student retention is critical for academic quality and institutional effectiveness, especially in programs where foundational natural science courses such as mathematics, physics, and chemistry strongly influence progression and pose significant challenges. Early dropout identification in these contexts requires predictive models that are both accurate and interpretable. This study proposes an interpretable machine learning framework for student dropout prediction using academic, financial, and demographic data. It combines cost-sensitive XGBoost with Shapley Additive exPlanations (SHAP), addressing class imbalance without synthetic oversampling to preserve authentic performance patterns. Using a benchmark dataset from the Polytechnic Institute of Portalegre, the model achieved strong performance (Accuracy = 89.6%, F1 = 0.834, AUC-ROC = 0.934). SHAP analyses identified academic engagement, tuition payment status, and scholarship access as key predictors. The findings support transparent early-warning systems and inform policies to improve retention, strengthen support in science-based learning environments, and promote equitable student outcomes.
Paper Presenter
avatar for Albert Manamela

Albert Manamela

South Africa

Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

Automated Generation of High-Level Architectural Diagrams from Embedded System Code using Explainable AI
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Aqdas Hassan, Farooque Azam, and Muhammad Waseem Anwar
Abstract - The RISC-V Vector Extension (RVV) enables scalable data-parallel processing through a flexible vector length architecture, offers a standardized and scalable approach to vector computing. Derived from an analysis of existing RVV architectures, this paper presents a focused architectural study and implementation of a basic RVV-based vector extension. Unlike complex, high-performance designs, the proposed architecture prioritizes simplicity and clarity, implementing only essential vector arithmetic and memory instructions. The vector extension is integrated with a single-cycle scalar RISC-V core, and instruction decoding is implemented and verified at RTL level. Functional simulation confirms correctness of RVV instruction decoding. This work bridges the gap between theoretical RVV studies and practical step-by-step hardware implementation.
Paper Presenter
avatar for Aqdas Hassan

Aqdas Hassan

Pakistan

Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

Development and Strategic Analysis of a Java-Based Healthcare Management System with Integrated WebRTC Telemedicine: Bridging the Digital Divide in Emerging Markets
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Harshwardhan Singh Rathore, Dev Krishan, Amit, Abhinav Vyas, Harshit Choudhary, Kunal Chittora, Vishal Shrivastava, Ram Babu Buri, Akhil Pandey, Mukesh Mishra
Abstract - Predicting protein–ligand binding affinity is an essential step in early drug discovery. We present Alchemy, a ligand-centric Graph Neural Network (GNN) framework for predicting binding affinities (pKd/pKi) from molecular graphs and a production-ready web interface for easy inference. Using a curated subset of the PDBbind dataset for prototyping and RDKit for cheminformatics preprocessing [6], we implement a message-passing GCN model with global pooling and train it using MSE regression. We evaluate model performance using RMSE, MAE, Pearson and Spearman correlations, and Concordance Index, and compare against docking scores and classical ML baselines. On the demo subset our model achieves an RMSE of X (±Y) and Pearson r of Z (±W) — results that highlight the potential and limitations of ligand-only approaches. We discuss data-scaling, protein incorporation strategies, ablation studies, and provide reproducible code and a web app to facilitate adoption.
Paper Presenter
avatar for Amit

Amit

India

Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

HyperGNNs for Multi-Modal Classification and Severity Analysis of Neurodegenerative Disorders
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - K Bhavish Raju, K Musadiq Pasha, Mohammed Saqlain, Nishaan Padanthaya, Jayashree R
Abstract - Neuro-degenerative disorders, particularly Alzheimer’s Disease (AD), pose a significant challenge in early diagnosis and severity assessment due to overlapping symptoms with conditions such as Mild Cognitive Impairment (MCI) and Cognitively Normal (CN) conditions. Accurate differentiation between these stages is essential for timely intervention but remains difficult due to the progressive and heterogeneous nature of these disorders. Traditional machine learning models struggle to effectively integrate diverse data modalities, such as medical imaging (MRI) and clinical tabular data. This study proposes Hypergraph Neural Networks (HyperGNNs) based framework to enhance multi-modal classification and disease severity modeling. By representing complex patient relationships as hypergraphs, our approach aims to improve diagnostic accuracy, reduce misdiagnosis, and provide an interpretable framework for understanding disease progression. To ensure clinical transparency, we incorporate explainability techniques such as SHAP and Grad-CAM to ensure model transparency, enabling clinicians to understand key features influencing predictions. The model will be evaluated on standard neuro-imaging datasets and clinical records, offering potential applications in personalized medicine and early intervention strategies.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

Research Status and Challenges of Electronic Waste Small Component Detection Based on Improved YOLOv8
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Zhou Xu, Shuzlina Abdul Rahman, Norlina Mohd Sabri, Rogayah Abdul Majid
Abstract - For the integration of solar systems within the power grid, there is the requirement for smarter systems that are capable of not only detecting faults but also optimizing their performance. The current paper introduces an innovative hybrid method that focuses on the detection of solar thermal faults and adaptive grid control, where the challenge had existed in the separation of the two aspects. This is achieved through the use of a deep learning U-Net model, where different kinds of solar panel fault types, such as single and multi hotspots, are detected from grayscale thermal images. The different kinds of fault types identified are used as a reinforcement learning approach (PPO), where decisions regarding safe and efficient use of the grid are made while considering fault awareness. Higher priority is granted to critical fault types through rewards that use penalties. It also comes with an immediate safety function to isolate faulty panels with zero delay for smooth and efficient function of the solar energy grid.
Paper Presenter
avatar for Zhou Xu

Zhou Xu

China

Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

SMART EXPENSES TRACKER: MANAGE EXPENSE SMARTLY
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Shubhrat Chaursiya, Toshif Mohammed Shaikh, Snehlata, Sangam Kumari, Vishal Shriastava, Ram Babu Buri, Vibhakar Pathak
Abstract - Computational modeling is essential for studying complex pedestrian dynamics under emergency conditions. This paper presents the design and implementation of an Emergency Evacuation Simulator, a robust grid-based modeling tool developed in Java. The system integrates two core components: an Agent-Based Model (ABM) for pedestrian behavior and Cellular Automata (CA) for modeling dynamic hazard propagation (Fire and Smoke spread). A key innovation is the use of an Optimized Breadth-First Search (BFS) algorithm coupled with 8directional pathfinding (Chebyshev distance), which significantly improves path efficiency and movement realism compared to traditional 4-directional methods. The simulator incorporates heterogeneous agents with varying vulnerability levels and features local collision avoidance. Experimental analysis confirms the efficiency of the 8-directional path finding and provides quantitative metrics on evacuation time, rate, and fatality statistics, offering a valuable platform for enhancing building safety protocols and emergency response strategies.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

The Development and Effect of AI-Powered Farmer Support Chatbots.
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Vedant Khade, Supriya Narad
Abstract - The world agricultural industry is increasingly becoming more complex due to the variability of climate, increasing shortage of resources, and the demand to obtain real-time and localized information. The conventional agricultural extension services that have been hindered by operational limited costs and low ratios of the farmers to experts tend to fail to provide the required advice at the right time and in a more personalized way especially to the smallholder farmers in the remote and resource-limited locations. The present paper examines the new and disruptive position of the AI-based farmer support chatbots as a scalable, effective, and ubiquitous response to this issue. They offer 24/7, multi-lingual, and highly context-sensitive advice on a wide range of issues, including complicated crop management protocols, early pest and disease detection, live market price tracking, and navigation of complicated government subsidy programs, using their sophistication in Natural Language Processing (NLP), advanced Machine Learning (ML) algorithms and Computer Vision (CV). The study conducts a synthesis of the existing technological practices and provides important quantitative evidence, including these findings; (a) large-scale changes in the profitability of farmers, yield maximization, and efficient resource use; (b) the critical analysis of the technical and socio-ethical issues, including the bias of the data, the lack of digital literacy, and the accountability systems. The paper concludes by offering an assumption that although rigorous, responsible, and ethical development is the most important, farmer support chatbots are not merely the instruments of the incremental change, but should be the ones that will radically transform agricultural knowledge dissemination, which will subsequently result in more resilient, productive, and sustainable global food systems.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

The Next Generation of Code Quality Assurance: AI- Accelerated Code Review Platforms
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - Aditya Kasture, Supriya Narad
Abstract - The pace of change of the software development industry is unprecedented as the introduction of AI code generation tools has not only doubled the productivity of developers by up to 55 percent but also introduced the industry with a new problem of exponential growth in the complexity of the code and technical debt. The former techniques of code review are monotonous, infrequent and time consuming. Such an approach cannot validate the mammoth amounts of gains that are evident in an AI-oriented development cycle. The structure, performance, and service of AI-Accelerated Code Review (AACR) Platforms, which we discuss in this paper, would be the last mile of quality control that would be the solution to this so-called paradoxical situation of such engineering productivity. We propose an AACR system, which is built on a Multi-Agent Architecture with Large Language Models (LLM) to accomplish contextual and reasoning problems, custom machine learning (ML) models to evaluate security and performance, and a code graph analysis to obtain a good composition of the codebase. We conclude that median code review time is an option to decrease by 40-60 per- cent with the AACR platforms. Besides, the accuracy of the detection of the defects can also rise in comparison with the old method of analyzing and reviewing of the data manually. The article relies on the primary argument presented in the description above and the debates concerning the unlawful use of AI generated data and the in- creased use of AI.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

12:15pm GMT+07

Urban Scene Intelligence: A Semantic Anchor-and-Expand Framework for Grounded Scene Understanding
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Authors - V. R. Badri Prasad, Shrujana Patil, Shreeraksha, Prathik S. Hanji, S Vikas Vathsal
Abstract - Traditional object detection systems are limited in their ability to capture the complexity of urban scenes, often overlooking critical spatial, contextual, and functional relationships required. This paper introduces Urban Scene Intelligence, a Semantic Anchor-and-Expand (SAE) framework that integrates multi-modal perception, structured scene graph construction, and controlled narrative generation to produce grounded descriptions of urban environments. The proposed modular architecture incorporates OWL-ViT for open-vocabulary object detection, SegFormer for semantic segmentation, DepthAnything for spatial depth estimation, Qwen2-VL for attribute enrichment, and OCR for extracting textual context. Unlike end-to-end multimodal models, the threestage pipeline explicitly separates visual perception, symbolic reasoning, and language generation, thereby improving interpretability and factual grounding. By unifying heterogeneous visual cues into a symbolic representation and generating context-aware descriptions from this representation, the SAE framework establishes a transparent and extensible approach to urban scene understanding in complex real-world environments.
Paper Presenter
Friday April 10, 2026 12:15pm - 2:15pm GMT+07
Virtual Room A Bangkok, Thailand

2:15pm GMT+07

Session Chair Concluding Remarks
Friday April 10, 2026 2:15pm - 2:17pm GMT+07

Invited Guest & Session Chair
avatar for Dr. Prashant Suryavanshi

Dr. Prashant Suryavanshi

Principal, Hon Shri Babanrao Pachpute Vichardhara Trust's, Parikrama Polytechnic Kashti. Maharashtra, India.

avatar for Prof. Reena Satpute

Prof. Reena Satpute

Assistant Professor, Faculty of Science and Technology, Datta Meghe Institute of Higher Education & Research (Deemed to be University), Maharashtra, India
Friday April 10, 2026 2:15pm - 2:17pm GMT+07
Virtual Room A Bangkok, Thailand

2:17pm GMT+07

Session Closing and Information To Authors
Friday April 10, 2026 2:17pm - 2:20pm GMT+07

Moderator
Friday April 10, 2026 2:17pm - 2:20pm GMT+07
Virtual Room A Bangkok, Thailand

2:58pm GMT+07

Opening Remarks
Friday April 10, 2026 2:58pm - 3:00pm GMT+07

Invited Guest & Session Chair
avatar for Dr. Hamidreza Khaleghzadeh

Dr. Hamidreza Khaleghzadeh

Senior Lecturer, University of Portsmouth, United Kingdom

avatar for Dr. Rakhi Bhardwaj

Dr. Rakhi Bhardwaj

Assistant Professor & Associate Dean R&D, Vishwakarma Institute of Technology, India
Friday April 10, 2026 2:58pm - 3:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

A Comprehensive Survey on Machine Learning and Deep Learning Methods for Vehicle Detection and Classification
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Kashyap Patel, Urvashi Chaudhari, Chirag Patel, Nirav Bhatt
Abstract - Automatic traffic surveillance has a hard time finding and classifying vehicles that are trying to get in the way. To keep an eye on things in real time, you need to be able to tell the difference between cars, trucks, buses, and other types of vehicles. Traffic management systems need to be able to accurately identify vehicles as the number of cars on the road grows. This paper examines various machine learning (ML) and deep learning (DL) techniques employed to identify and categorize vehicles in images and videos. The authors emphasize the significance of algorithms, such as CNNs, YOLO, and AdaBoost, in enhancing detection accuracy and efficiency. This paper examines various published re-search studies to discern methodologies, datasets, and future research directions in vehicle detection and classification, offering insights into the existing techno-logical landscape and its prospective developments.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

A Study on the Integration of Sensor Innovations for Monitoring Brake Pad Wear in Vehicles
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Renukaradya V, Kumar P K
Abstract - Ethylene and vinyl acetate or EVA is a co-polymer used as a substitute for a lot of materials. EVA is a versatile material and it has a lot of applications ranging from electronics, healthcare, footwear, building applications etc. It is mainly used in sport shoes due to its property to absorb shock impact and insulation properties. In addition, EVA is very cost-friendly, produces no odor, and light in weight material. But with overuse of it, the cellular structure chang-es and can affect the shoes' quality and insulation properties. In addition to the cellular structure, the air molecules present in it also collapse. This paper focus-es on the bonding properties of EVA at different temperatures and its dielectric properties under different operating and manufacturing conditions. The upper, bottom, and sides of EVA shoes are exposed to high voltage till the breakdown. The experimentation was done at Electrical HV laboratory on the university campus where a 100kV HVAC testing system is available. This paper presents the tabulated results on the dielectric strength of EVA shoes under varying operating conditions. Additionally, it examines the bonding properties of EVA shoes at different manufacturing temperatures, aiming to predict their lifespan, quality, and finish. The results of these studies are thoroughly discussed within the document.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Detecting Cybersecurity Threats by Integrating Explainable AI with SHAP Interpretability and Strategic Data Sampling
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Norrakith Srisumrith, Sunantha Sodsee
Abstract - The critical need for transparent and trustworthy machine learning in cybersecurity operations drives the development of this integrated Explainable AI (XAI) framework. Our methodology addresses three fundamental challenges in deploying AI for threat detection: handling massive datasets through Strategic Sampling Methodology that preserves class distributions while enabling efficient model development; ensuring experimental rigor via Automated Data Leakage Prevention that systematically identifies and removes contaminated features; and providing operational transparency through Integrated XAI Implementation using SHAP analysis for model-agnostic interpretability across algorithms. Applied to the CIC-IDS2017 dataset, our approach maintains detection efficacy while reducing computational overhead and delivering actionable explanations for security analysts. The framework demonstrates that explainability, computational efficiency, and experimental integrity can be simultaneously achieved, providing a robust foundation for deploying trustworthy AI systems in security operations centers where decision transparency is paramount.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Federated Learning for Fraud Detection Across Financial Institutions
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Amelia Santosh, Bhavika Pradeep, Dhanuvarsha S S, Harisurya Reddy S, Shruthi L
Abstract - Real-time analysis, high accuracy, and robust privacy protection across several institutions are necessary for financial fraud detection. Restrictions on data sharing and non-IID transaction patterns cause traditional centralized models to fail. Graph Neural Networks (GNNs) for anomaly detection and a structured fraud reporting mechanism are integrated in this paper’s federated learning-based fraud detection framework. While GNNs capture intricate relationships between accounts, devices, and transactions, the system allows institutions to jointly train a global model without exchanging raw data. The feasibility of implementing collaborative fraud detection across financial institutions is demonstrated by the experimental results, which show improved fraud detection performance, enhanced recall on minority fraud cases, and effective privacy preservation.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Highly Isolated Dual Port MIMO UWB antenna Development for Wireless Applications
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Killol Pandya, Aneri Pandya, Trushit Upadhyaya, Upesh Patel, Poonam Thanki, Kanwarpreet Kaur
Abstract - The proposed Multiple Input Multiple Output dual-port antenna radiates for Ultra Wide-Band (UWB) applications. The engineered structure exhibits between the 2.10 GHz to 9.5 GHz frequency. The structure consists dual radiating elements which are positioned at certain distance in order to minimize the effect of inter element interference. The radiator is planar and having triangular shape at the upper side to disturb the current path which eventually creates better radiation. A couple of up arrow shaped slots have been created to improve the current distribution. The microstrip feed line is utilized to excite the antenna structure. A partial ground plane with isolating technique was created to receive the UWB response. The middle layer between the radiators and the ground plane is having the FR4 material which is a cost effective for the bulk production. The physical antenna has been developed from the prototype and the results were measured. The simulated results are aligned with the measured results which shows the antenna potential. The primary diversity parameters such as Diversity Gain, Envelope Correlation Coefficient, Channel Capacity Loss and Mean effective gain were also measure and their simulated values fall under the expected span. The developed antenna is well suitable for UWB wireless applications.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Human Perceptions of AI-Driven Personalization: Surveillance, Autonomy, and Trust in Digital Customer Journeys
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Tiurida Lily Anita, Dino Gustaf Leonandri, Mohd. Nor Shahizan Ali
Abstract - In this paper, we address the problem of rainy condition classification in order to allow autonomous systems to ensure safe operation in different weather conditions of rain, especially for drones. The earlier weather condition classification methods are inclined towards using big and computationally costly models and cannot thus be employed in real-time on resource-constrained platforms such as drones and edge devices. The motivation behind this work is to introduce a light-weight, efficient deep model which would be able to classify various rain conditions with low computational cost so that it may be deployed efficiently on low-resource devices. We present a novel CNN architecture and evaluate its performance on a collection of seven distinct rain conditions. The models are bench marked against some of the state-of-the-art pretrained models to demonstrate the compromise between efficiency and accuracy. Performance is evaluated using accuracy, inference time, and model size. The model has accuracy 95.93% with least model size 89.09 KB with inference time of 32.664 ms bridging the gap in lightweight and real-time classification.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Hybrid BERT-LSTM Model with XAI Integration for Reliable Fake News Detection
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Mouniesh V, Sona S, Mariya Ashile K, Karthick Panneerselvam
Abstract - This paper presents the implementation experience of indigenously developed Data Concentrator Units (DCUs) for Advanced Metering Infrastructure (AMI) system. The DCU functions as the last-mile communication bridge between field devices and the Head-End System (HES), enabling efficient data collection, aggregation, and management. By performing local processing and aggregation, it reduces data traffic over the Wide Area Network (WAN), there-by improving communication efficiency, scalability, and reliability. The DCU firmware is designed for flexible communication and secure data handling, sup-porting pluggable WAN and Neighbourhood Area Network (NAN) communication modules compliant with proprietary BHARAT IoT standards, that can be upgraded or replaced without requiring complete system replacement or rede-sign. It also ensures robust data security through AES-GCM-GMAC encryption. The NAN module is implemented using LoRa technology, enhanced through the LoRaPro communication module, which increases payload capacity from the standard 256 bytes to 1 KB using an advanced packet stitching and slicing algorithm that ensures reliable reconstruction of larger messages. The paper discusses the major design and development challenges encountered and the methodologies adopted to address them.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Indigenous Development of Data Concentrator Units (DCUs) for Advanced Metering Infrastructure (AMI)
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Devika K S, Jiju K, Dinesh Kumar R, Ashish Murikingal, Anoop V G
Abstract -This paper presents the implementation experience of indigenously developed Data Concentrator Units (DCUs) for Advanced Metering Infrastructure (AMI) system. The DCU functions as the last-mile communication bridge between field devices and the Head-End System (HES), enabling efficient data collection, aggregation, and management. By performing local processing and aggregation, it reduces data traffic over the Wide Area Network (WAN), there-by improving communication efficiency, scalability, and reliability. The DCU firmware is designed for flexible communication and secure data handling, sup-porting pluggable WAN and Neighbourhood Area Network (NAN) communication modules compliant with proprietary BHARAT IoT standards, that can be upgraded or replaced without requiring complete system replacement or rede-sign. It also ensures robust data security through AES-GCM-GMAC encryption. The NAN module is implemented using LoRa technology, enhanced through the LoRaPro communication module, which increases payload capacity from the standard 256 bytes to 1 KB using an advanced packet stitching and slicing algorithm that ensures reliable reconstruction of larger messages. The paper discusses the major design and development challenges encountered and the methodologies adopted to address them.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

INTRUSION DETECTION USING UNRAVELLED SPATIAL FEATURES IN MULTILAYER PERCEPTRON WITH GRADIENT JACOBIAN ANALYSIS
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Gaurav Kulkarni, Maya Rathore
Abstract -In digital world, cyber-attacks are becoming more sophisticated and popular. The conventional intrusion detection models are not adequate in challenging threat escapes. Importantly, the major reason for increasing demand in the networks, unauthorized access is increasing their interests in these areas. Various network environments and organizations are tackling numerous of attacks on their network at frequent times. Traditionally, various manual methods are used for intrusion detection such as packet and flow analysis, traffic log reviewers and monitoring the security. Nevertheless, the manual techniques for such type of the detections takes too much time and also the result obtained is not up to the mark, so due to this it is difficult to predict all types of attacks and intrusions for network security. To overcome these issues, several conventional researches have concentrated on intrusion detection models to offer effective security to the networks. Conversely, it results with accuracy and speed lacks. For enhancing the intrusion detection, research make use of a Deep Learning (DL) Unravelled Spatial Features in Multilayer Perceptron with Gradient Jacobian Matrix. Gaussian Activation is used to enhance the Intrusion detection system for an effective classification. In the proposed research work we are using the RT-IoT dataset and the final efficiency has been analyzed by using various parameters like overall correctness, actually correct, correctly identified by the model,and the balance between the both values of recall and precision (Harmonic Mean). Furthermore, the current work and the proposed model is developed to contribute to avoid the different cyber threats by timely identifying such type of intrusion in the networks.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

3:00pm GMT+07

Sustained Adoption of QR-Code Payments in Mobile Banking: Evidence from QRIS Users
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Authors - Tiurida Lily Anita, Ali Faik, Muhammad Zilal Hamzah, Hainnuraqma Rahim
Abstract - Web accessibility and usability are fundamental pillars for ensuring effective digital inclusion, especially in higher education institutions committed to equity in access to information. This study aimed to evaluate the usability and accessibility of the website of the Inclusion, Social Equity, and Gender Unit at the Technical University of Manabí, using the WCAG 2.0 guidelines. A mixed methodology with a qualitative and applied approach was employed. Initial results revealed a low level of compliance with accessibility standards, highlighting deficiencies in the principles of perceptibility and operability, such as the absence of alternative descriptions for images and insufficient contrast. After implementing improvements, the website achieved 76% compliance according to a manual review, with notable progress in responsive design and the incorporation of an accessibility toolbar. However, challenges remain regarding the principle of robustness, underscoring the importance of combining automated tools with thorough manual evaluations. Future work will adopt WCAG 2.1 guidelines and integrate advanced assistive technologies to overcome current limitations, promoting a more inclusive and accessible digital environment for all users.
Paper Presenter
Friday April 10, 2026 3:00pm - 5:00pm GMT+07
Virtual Room A Bangkok, Thailand

5:00pm GMT+07

Session Chair Concluding Remarks
Friday April 10, 2026 5:00pm - 5:02pm GMT+07

Invited Guest & Session Chair
avatar for Dr. Hamidreza Khaleghzadeh

Dr. Hamidreza Khaleghzadeh

Senior Lecturer, University of Portsmouth, United Kingdom

avatar for Dr. Rakhi Bhardwaj

Dr. Rakhi Bhardwaj

Assistant Professor & Associate Dean R&D, Vishwakarma Institute of Technology, India
Friday April 10, 2026 5:00pm - 5:02pm GMT+07
Virtual Room A Bangkok, Thailand

5:02pm GMT+07

Session Closing and Information To Authors
Friday April 10, 2026 5:02pm - 5:05pm GMT+07

Moderator
Friday April 10, 2026 5:02pm - 5:05pm GMT+07
Virtual Room A Bangkok, Thailand
 

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