4.6 Article

A Lightweight YOLOv4-Based Forestry Pest Detection Method Using Coordinate Attention and Feature Fusion

期刊

ENTROPY
卷 23, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/e23121587

关键词

pest detection; YOLOv4; MobileNet; attention mechanism; feature fusion; deep learning

资金

  1. National Key Research and Development Program of China [2020YFD1100605]
  2. National Natural Science Foundation of China [61966016, 61861021]
  3. National-level Student Innovation and Entrepreneurship Training Program [202110410026]
  4. Science and Technology Project of Jiangxi Provincial Education Department [190194]

向作者/读者索取更多资源

In this study, the YOLOv4_MF model was proposed to improve pest detection accuracy in complex forestry environments. By using techniques such as MobileNetv2 and depth-wise separated convolution, the model achieved higher performance compared to YOLOv4 while reducing the model parameters. The experimental results demonstrated superior mAP, precision, and recall, as well as a significant reduction in model size.
Traditional pest detection methods are challenging to use in complex forestry environments due to their low accuracy and speed. To address this issue, this paper proposes the YOLOv4_MF model. The YOLOv4_MF model utilizes MobileNetv2 as the feature extraction block and replaces the traditional convolution with depth-wise separated convolution to reduce the model parameters. In addition, the coordinate attention mechanism was embedded in MobileNetv2 to enhance feature information. A symmetric structure consisting of a three-layer spatial pyramid pool is presented, and an improved feature fusion structure was designed to fuse the target information. For the loss function, focal loss was used instead of cross-entropy loss to enhance the network's learning of small targets. The experimental results showed that the YOLOv4_MF model has 4.24% higher mAP, 4.37% higher precision, and 6.68% higher recall than the YOLOv4 model. The size of the proposed model was reduced to 1/6 of that of YOLOv4. Moreover, the proposed algorithm achieved 38.62% mAP with respect to some state-of-the-art algorithms on the COCO dataset.

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