Exploring Convolutional Neural Networks for Rice Grain Classification: An Explainable AI Approach
Muhammad Junaid Asif, Hamza Khan, Rabia Tehseen, Rana Fayyaz Ahmad, Mujtaba Asad, Syed Tahir Hussain Rizvi, and Shazia Saqib

TL;DR
This paper develops a CNN-based system for automatic rice grain classification, achieving high accuracy and incorporating explainability techniques like LIME and SHAP to interpret model decisions.
Contribution
It introduces an effective CNN framework for rice classification combined with explainability methods, enhancing transparency in AI-based food quality assessment.
Findings
High classification accuracy with minimal misclassification
Effective use of LIME and SHAP for model interpretability
Robust performance validated by ROC and confusion matrix analyses
Abstract
Rice is an essential staple food worldwide that is important in promoting international trade, economic growth, and nutrition. Asian countries such as China, India, Pakistan, Thailand, Vietnam, and Indonesia are notable for their significant contribution to the cultivation and utilization of rice. These nations are also known for cultivating different rice grains, including short and long grains. These sizes are further classified as basmati, jasmine, kainat saila, ipsala, arborio, etc., catering to diverse culinary preferences and cultural traditions. For both local and international trade, inspecting and maintaining the quality of rice grains to satisfy customers and preserve a country's reputation is necessary. Manual quality check and classification is quite a laborious and time-consuming process. It is also highly prone to mistakes. Therefore, an automatic solution must be proposed…
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Taxonomy
MethodsLocal Interpretable Model-Agnostic Explanations · Shapley Additive Explanations
