Towards Robust Plant Disease Diagnosis with Hard-sample Re-mining Strategy
Quan Huu Cap, Atsushi Fukuda, Satoshi Kagiwada, Hiroyuki Uga, Nobusuke, Iwasaki, Hitoshi Iyatomi

TL;DR
This paper introduces HSReM, a strategic hard-sample re-mining training method that improves plant disease detection accuracy by effectively selecting challenging healthy and diseased samples, outperforming existing models.
Contribution
The paper proposes a novel hard-sample re-mining strategy (HSReM) that enhances detection performance by strategically selecting training samples, addressing the challenge of similar healthy and diseased plant data.
Findings
HSReM significantly improves diagnostic accuracy on large-scale unseen data.
The model trained with HSReM outperforms state-of-the-art classification and detection models.
HSReM effectively balances healthy and diseased sample training, reducing mis-detections.
Abstract
With rich annotation information, object detection-based automated plant disease diagnosis systems (e.g., YOLO-based systems) often provide advantages over classification-based systems (e.g., EfficientNet-based), such as the ability to detect disease locations and superior classification performance. One drawback of these detection systems is dealing with unannotated healthy data with no real symptoms present. In practice, healthy plant data appear to be very similar to many disease data. Thus, those models often produce mis-detected boxes on healthy images. In addition, labeling new data for detection models is typically time-consuming. Hard-sample mining (HSM) is a common technique for re-training a model by using the mis-detected boxes as new training samples. However, blindly selecting an arbitrary amount of hard-sample for re-training will result in the degradation of diagnostic…
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Taxonomy
TopicsSmart Agriculture and AI · Plant Disease Management Techniques · Plant Virus Research Studies
