Machine-Vision-Based Bangladeshi Geographical Indication (GI) Dessert Recognition

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Date
2026-04-25Author
Bhuiyan, Shakibur Rahman
Kundu, Dip
Siam, Md Tamzed Hossain
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Geographical Indication (GI) certification preserves products whose identity and value are linked to their geographical origin. Despite the cultural and economic importance of Bangladeshi GI-certified desserts, no benchmark dataset or automated recognition system previously existed, creating risks of counterfeiting and mislabeling. This thesis addresses the gap by introducing BD-GI-Desserts13, a dataset of 11,692 images across 13 GI dessert classes, and proposing a machine-vision framework for fine-grained dessert recognition.
The study develops a lightweight Custom Convolutional Neural Network (CCNN) and compares it with transfer-learning and traditional machine learning models. Experimental results show that the CCNN achieves 99.37% test accuracy while remaining computationally efficient for real-time web and mobile applications. The proposed framework provides a reproducible baseline for future GI food recognition research in Bangladesh and serves as a decision-support tool rather than a legal certification system.
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