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Deep Learning-Driven Plant Pathology Assistant: Enabling Visual Diagnosis with AI-Powered Focus and Remediation Recommendations for Precision Agriculture
by
Wang, Ran
, Kang, Jichang
, Zhao, Lianjun
in
Accuracy
/ Agriculture
/ Artificial intelligence
/ Datasets
/ Deep learning
/ Diagnostic systems
/ Food security
/ Geometric transformation
/ Image quality
/ interpretable AI
/ Medical imaging
/ Morphology
/ plant disease identification
/ Plant diseases
/ Plant pathology
/ Precision agriculture
/ Random sampling
/ Rare diseases
/ Recall
/ Recognition
/ Statistical sampling
/ synergistic double augmentation
/ Visualization
2025
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Deep Learning-Driven Plant Pathology Assistant: Enabling Visual Diagnosis with AI-Powered Focus and Remediation Recommendations for Precision Agriculture
by
Wang, Ran
, Kang, Jichang
, Zhao, Lianjun
in
Accuracy
/ Agriculture
/ Artificial intelligence
/ Datasets
/ Deep learning
/ Diagnostic systems
/ Food security
/ Geometric transformation
/ Image quality
/ interpretable AI
/ Medical imaging
/ Morphology
/ plant disease identification
/ Plant diseases
/ Plant pathology
/ Precision agriculture
/ Random sampling
/ Rare diseases
/ Recall
/ Recognition
/ Statistical sampling
/ synergistic double augmentation
/ Visualization
2025
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Do you wish to request the book?
Deep Learning-Driven Plant Pathology Assistant: Enabling Visual Diagnosis with AI-Powered Focus and Remediation Recommendations for Precision Agriculture
by
Wang, Ran
, Kang, Jichang
, Zhao, Lianjun
in
Accuracy
/ Agriculture
/ Artificial intelligence
/ Datasets
/ Deep learning
/ Diagnostic systems
/ Food security
/ Geometric transformation
/ Image quality
/ interpretable AI
/ Medical imaging
/ Morphology
/ plant disease identification
/ Plant diseases
/ Plant pathology
/ Precision agriculture
/ Random sampling
/ Rare diseases
/ Recall
/ Recognition
/ Statistical sampling
/ synergistic double augmentation
/ Visualization
2025
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Deep Learning-Driven Plant Pathology Assistant: Enabling Visual Diagnosis with AI-Powered Focus and Remediation Recommendations for Precision Agriculture
Journal Article
Deep Learning-Driven Plant Pathology Assistant: Enabling Visual Diagnosis with AI-Powered Focus and Remediation Recommendations for Precision Agriculture
2025
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Overview
Plant disease recognition is a critical technology for ensuring food security and advancing precision agriculture. However, challenges such as class imbalance, heterogeneous image quality, and limited model interpretability remain unresolved. In this study, we propose a Synergistic Dual-Augmentation and Class-Aware Hybrid (SDA-CAH) model designed to achieve robust and interpretable recognition of plant diseases. Our approach introduces two innovative augmentation strategies: (1) an optimized MixUp method that dynamically integrates class-specific features to enhance the representation of minority classes; and (2) a customized augmentation pipeline that combines geometric transformations with photometric perturbations to strengthen the model’s resilience against image variability. To address class imbalance, we further design a class-aware hybrid sampling mechanism that incorporates weighted random sampling, effectively improving the learning of underrepresented categories and optimizing feature distribution. Additionally, a Grad-CAM–based visualization module is integrated to explicitly localize lesion regions, thereby enhancing the transparency and trustworthiness of the predictions. We evaluate SDA-CAH on the PlantVillage dataset using a pretrained EfficientNet-B0 as the backbone network. Systematic experiments demonstrate that our model achieves 99.95% accuracy, 99.89% F1-score, and 99.89% recall, outperforming several strong baselines, including an optimized Xception (99.42% accuracy, 99.39% F1-score, 99.41% recall), standard EfficientNet-B0 (99.35%, 99.32%, 99.33%), and MobileNetV2 (95.77%, 94.52%, 94.77%). For practical deployment, we developed a web-based diagnostic system that integrates automated recognition with treatment recommendations, offering user-friendly access for farmers. Experimental evaluations indicate that SDA-CAH outperforms existing approaches in predictive accuracy and simultaneously defines a new paradigm for interpretable and scalable plant disease recognition, paving the way for next-generation precision agriculture.
Publisher
MDPI AG
Subject
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