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Small Object Detection in Agriculture: A Case Study on Durian Orchards Using EN-YOLO and Thermal Fusion
by
Sun, Wei
, Chu, Qiushi
, Jun, Tan
, Tang, Ruipeng
, Sun, Yili
in
Ablation
/ Accuracy
/ accurate identification
/ Agriculture
/ Algorithms
/ Case studies
/ Crop diseases
/ Datasets
/ Deep learning
/ Digital agriculture
/ durian pests and diseases
/ industry & innovation and infrastructure
/ Infrared imaging
/ intelligent durian plantation management
/ Knowledge bases (artificial intelligence)
/ Leaves
/ Neural networks
/ Object recognition
/ Occlusion
/ Pattern recognition
/ pest and disease control
/ Pests
/ Real time
/ Semantics
/ Software
/ Spatial data
/ Thermal imaging
/ YOLO-v8
2025
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Small Object Detection in Agriculture: A Case Study on Durian Orchards Using EN-YOLO and Thermal Fusion
by
Sun, Wei
, Chu, Qiushi
, Jun, Tan
, Tang, Ruipeng
, Sun, Yili
in
Ablation
/ Accuracy
/ accurate identification
/ Agriculture
/ Algorithms
/ Case studies
/ Crop diseases
/ Datasets
/ Deep learning
/ Digital agriculture
/ durian pests and diseases
/ industry & innovation and infrastructure
/ Infrared imaging
/ intelligent durian plantation management
/ Knowledge bases (artificial intelligence)
/ Leaves
/ Neural networks
/ Object recognition
/ Occlusion
/ Pattern recognition
/ pest and disease control
/ Pests
/ Real time
/ Semantics
/ Software
/ Spatial data
/ Thermal imaging
/ YOLO-v8
2025
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Small Object Detection in Agriculture: A Case Study on Durian Orchards Using EN-YOLO and Thermal Fusion
by
Sun, Wei
, Chu, Qiushi
, Jun, Tan
, Tang, Ruipeng
, Sun, Yili
in
Ablation
/ Accuracy
/ accurate identification
/ Agriculture
/ Algorithms
/ Case studies
/ Crop diseases
/ Datasets
/ Deep learning
/ Digital agriculture
/ durian pests and diseases
/ industry & innovation and infrastructure
/ Infrared imaging
/ intelligent durian plantation management
/ Knowledge bases (artificial intelligence)
/ Leaves
/ Neural networks
/ Object recognition
/ Occlusion
/ Pattern recognition
/ pest and disease control
/ Pests
/ Real time
/ Semantics
/ Software
/ Spatial data
/ Thermal imaging
/ YOLO-v8
2025
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Small Object Detection in Agriculture: A Case Study on Durian Orchards Using EN-YOLO and Thermal Fusion
Journal Article
Small Object Detection in Agriculture: A Case Study on Durian Orchards Using EN-YOLO and Thermal Fusion
2025
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Overview
Durian is a major tropical crop in Southeast Asia, but its yield and quality are severely impacted by a range of pests and diseases. Manual inspection remains the dominant detection method but suffers from high labor intensity, low accuracy, and difficulty in scaling. To address these challenges, this paper proposes EN-YOLO, a novel enhanced YOLO-based deep learning model that integrates the EfficientNet backbone and multimodal attention mechanisms for precise detection of durian pests and diseases. The model removes redundant feature layers and introduces a large-span residual edge to preserve key spatial information. Furthermore, a multimodal input strategy—incorporating RGB, near-infrared and thermal imaging—is used to enhance robustness under variable lighting and occlusion. Experimental results on real orchard datasets demonstrate that EN-YOLO outperforms YOLOv8 (You Only Look Once version 8), YOLOv5-EB (You Only Look Once version 5—Efficient Backbone), and Fieldsentinel-YOLO in detection accuracy, generalization, and small-object recognition. It achieves a 95.3% counting accuracy and shows superior performance in ablation and cross-scene tests. The proposed system also supports real-time drone deployment and integrates an expert knowledge base for intelligent decision support. This work provides an efficient, interpretable, and scalable solution for automated pest and disease management in smart agriculture.
Publisher
MDPI AG,Multidisciplinary Digital Publishing Institute (MDPI)
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