Advancements in Crop Analysis through Deep Learning and Explainable AI
Hamza Khan

TL;DR
This paper presents a deep learning framework combining CNNs and explainable AI techniques to classify rice varieties and diagnose leaf diseases, improving automation, transparency, and reliability in crop quality assessment.
Contribution
It introduces an integrated deep learning and XAI approach for rice classification and disease diagnosis, enhancing interpretability and accuracy over existing methods.
Findings
High classification accuracy for rice varieties
Effective diagnosis of rice leaf diseases
Enhanced model transparency with XAI techniques
Abstract
Rice is a staple food of global importance in terms of trade, nutrition, and economic growth. Among Asian nations such as China, India, Pakistan, Thailand, Vietnam and Indonesia are leading producers of both long and short grain varieties, including basmati, jasmine, arborio, ipsala, and kainat saila. To ensure consumer satisfaction and strengthen national reputations, monitoring rice crops and grain quality is essential. Manual inspection, however, is labour intensive, time consuming and error prone, highlighting the need for automated solutions for quality control and yield improvement. This study proposes an automated approach to classify five rice grain varieties using Convolutional Neural Networks (CNN). A publicly available dataset of 75000 images was used for training and testing. Model evaluation employed accuracy, recall, precision, F1-score, ROC curves, and confusion matrices.…
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