Mirza Niaz Morshed

Work place: Bangladesh University of Business and Technology, Dhaka, Bangladesh

E-mail: mirza.n.morshed@gmail.com

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Biography

Mirza Niaz Morshed received the B.Sc. degree in computer science and engineering from the Bangladesh University of Business and Technology (BUBT), Dhaka, Bangladesh, in 2025. He is currently pursuing the M.Sc. degree in computer science and engineering at the University of Asia Pacific (UAP), Dhaka, Bangladesh. Since May 2025, he has been serving as a Volunteer Research Assistant with the Department of Computer Science and Engineering, BUBT, where he is involved in AI- and data-driven research activities, including experimental analysis, model development, and research manuscript preparation. His research interests include computer vision, adversarial machine learning, trustworthy and explainable AI, multimodal AI systems, quantum computing, and AI applications in smart agriculture and medical imaging. He has authored and co-authored several research papers in international journals and conferences.

Author Articles
RiceVision: A Cross-Platform System for Real-Time Rice Variety Identification Using Deep Learning

By Al Hossain Abid Mirza Niaz Morshed Md. Ashif-Ul-Haque Md Masudul Islam Md. Shafiqul Islam

DOI: https://doi.org/10.5815/ijeme.2026.03.08, Pub. Date: 8 Jun. 2026

This study presents RiceVision, a cross-platform software system for real-time rice variety identification using deep learning–based image analysis. Unlike prior work that primarily focuses on classification accuracy, RiceVision emphasizes reproducibility, deployment, and usability in real-world agricultural environments. The system integrates a web-based platform and an offline-capable Android application within a unified architecture, ensuring consistent preprocessing and inference across platforms. Deep learning models are deployed using TensorFlow and TensorFlow Lite to support both online and on-device inference. The proposed hybrid framework combines convolutional neural networks (CNNs) and Vision Transformer (ViT) architectures using a stacked ensemble strategy. Experimental evaluation on a 62-class rice variety dataset demonstrated strong classification performance, where the stacked ensemble achieved an average 5-fold validation accuracy of 98.64%, outperforming individual VGG16 (90.64%) and ViT-B/16 (91.28%) models. The system further demonstrated stable convergence behavior and low inter-fold variance, indicating robust generalization capability. A centralized model management mechanism enables version control and seamless updates across deployment platforms. Detailed model configurations, validation results, and explainability analyses are provided in the Supplementary Material. RiceVision highlights the potential of deployable AI systems for practical decision support in digital agriculture.

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