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A lightweight trichosanthes kirilowii maxim detection algorithm in complex mountain environments based on improved YOLOv7-tiny
by
Zhang, Yaya
, Li, Yuanhang
, Xie, Zhongjian
, Wu, Weilin
, Xiao, Yao
, Wan, ZhuXuan
, Chen, Xinwei
, Chen, Weiqi
in
Accuracy
/ Agricultural production
/ Algorithms
/ Analysis
/ Biology and Life Sciences
/ Complexity
/ Computer and Information Sciences
/ Cucurbitaceae
/ Deep learning
/ Design
/ Detection Algorithms
/ Distillation
/ Ecosystem components
/ Engineering and Technology
/ Environmental aspects
/ Experiments
/ Feature extraction
/ Growth
/ Harvest
/ Kitchenware
/ Lighting
/ Medicine and Health Sciences
/ Modules
/ Mountain environments
/ Mountains
/ Object recognition
/ Occlusion
/ Physical Sciences
/ Research and Analysis Methods
/ Social Sciences
/ Trichosanthes
/ Unmanned aerial vehicles
/ Vision systems
2025
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A lightweight trichosanthes kirilowii maxim detection algorithm in complex mountain environments based on improved YOLOv7-tiny
by
Zhang, Yaya
, Li, Yuanhang
, Xie, Zhongjian
, Wu, Weilin
, Xiao, Yao
, Wan, ZhuXuan
, Chen, Xinwei
, Chen, Weiqi
in
Accuracy
/ Agricultural production
/ Algorithms
/ Analysis
/ Biology and Life Sciences
/ Complexity
/ Computer and Information Sciences
/ Cucurbitaceae
/ Deep learning
/ Design
/ Detection Algorithms
/ Distillation
/ Ecosystem components
/ Engineering and Technology
/ Environmental aspects
/ Experiments
/ Feature extraction
/ Growth
/ Harvest
/ Kitchenware
/ Lighting
/ Medicine and Health Sciences
/ Modules
/ Mountain environments
/ Mountains
/ Object recognition
/ Occlusion
/ Physical Sciences
/ Research and Analysis Methods
/ Social Sciences
/ Trichosanthes
/ Unmanned aerial vehicles
/ Vision systems
2025
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A lightweight trichosanthes kirilowii maxim detection algorithm in complex mountain environments based on improved YOLOv7-tiny
by
Zhang, Yaya
, Li, Yuanhang
, Xie, Zhongjian
, Wu, Weilin
, Xiao, Yao
, Wan, ZhuXuan
, Chen, Xinwei
, Chen, Weiqi
in
Accuracy
/ Agricultural production
/ Algorithms
/ Analysis
/ Biology and Life Sciences
/ Complexity
/ Computer and Information Sciences
/ Cucurbitaceae
/ Deep learning
/ Design
/ Detection Algorithms
/ Distillation
/ Ecosystem components
/ Engineering and Technology
/ Environmental aspects
/ Experiments
/ Feature extraction
/ Growth
/ Harvest
/ Kitchenware
/ Lighting
/ Medicine and Health Sciences
/ Modules
/ Mountain environments
/ Mountains
/ Object recognition
/ Occlusion
/ Physical Sciences
/ Research and Analysis Methods
/ Social Sciences
/ Trichosanthes
/ Unmanned aerial vehicles
/ Vision systems
2025
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A lightweight trichosanthes kirilowii maxim detection algorithm in complex mountain environments based on improved YOLOv7-tiny
Journal Article
A lightweight trichosanthes kirilowii maxim detection algorithm in complex mountain environments based on improved YOLOv7-tiny
2025
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Overview
Detecting Trichosanthes Kirilowii Maxim (Cucurbitaceae) in complex mountain environments is critical for developing automated harvesting systems. However, the environmental characteristics of brightness variation, inter-plant occlusion, and motion-induced blurring during harvesting operations, detection algorithms face excessive parameters and high computational intensity. Accordingly, this study proposes a lightweight T.Kirilowii detection algorithm for complex mountainous environments based on YOLOv7-tiny, named KPD-YOLOv7-GD. Firstly, improve the multi-scale feature layer and reduce the complexity of the model. Secondly, a lightweight convolutional module is introduced to replace the standard convolutions in the Efficient Long-range Aggregation Network (ELAN-A) module, and the channel pruning techniques are applied to further decrease the model’s complexity. Finally, the experiment significantly enhanced the efficiency of feature extraction and the detection accuracy of the model algorithm through the integration of the Dynamic Head (DyHead) module, the Content-Aware Re-Assembly of Features (CARAFE) module, and the incorporation of knowledge distillation techniques. The experimental results showed that the mean average precision of the improved network KPD-YOLOv7-GD reached 93.2%. Benchmarked against mainstream single-stage algorithms (YOLOv3-tiny, YOLOv5s, YOLOv6s, YOLOv7-tiny, and YOLOv8), KPD-YOLOv7-GD demonstrated mean average precision improvements of 4.8%, 0.6%, 3.0%, 0.6%, and 0.2% with corresponding model compression rates of 81.6%, 68.8%, 88.9%, 63.4%, and 27.4%, respectively. Compared with similar studies, KPD-YOLOv7-GD exhibits lower complexity and higher recognition speed accuracy, making it more suitable for resource-constrained T.kirilowii harvesting robots.
Publisher
Public Library of Science,Public Library of Science (PLoS)
Subject
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