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基于自注意力机制和多尺度特征融合的水稻害虫检测

Detection of Rice Pests Based on Self-Attention Mechanism and Multi-Scale Feature Fusion.

作者信息

Hu Yuqi, Deng Xiaoling, Lan Yubin, Chen Xin, Long Yongbing, Liu Cunjia

机构信息

College of Electronic Engineering (College of Artificial Intelligence), South China Agricultural University, Guangzhou 510642, China.

National Center for International Collaboration Research on Precision Agricultural Aviation Pesticide Spraying Technology, Guangzhou 510642, China.

出版信息

Insects. 2023 Mar 13;14(3):280. doi: 10.3390/insects14030280.

Abstract

In recent years, the occurrence of rice pests has been increasing, which has greatly affected the yield of rice in many parts of the world. The prevention and cure of rice pests is urgent. Aiming at the problems of the small appearance difference and large size change of various pests, a deep neural network named YOLO-GBS is proposed in this paper for detecting and classifying pests from digital images. Based on YOLOv5s, one more detection head is added to expand the detection scale range, the global context (GC) attention mechanism is integrated to find targets in complex backgrounds, PANet is replaced by BiFPN network to improve the feature fusion effect, and Swin Transformer is introduced to take full advantage of the self-attention mechanism of global contextual information. Results from experiments on our insect dataset containing Crambidae, Noctuidae, Ephydridae, and Delphacidae showed that the average mAP of the proposed model is up to 79.8%, which is 5.4% higher than that of YOLOv5s, and the detection effect of various complex scenes is significantly improved. In addition, the paper analyzes and discusses the generalization ability of YOLO-GBS model on a larger-scale pest data set. This research provides a more accurate and efficient intelligent detection method for rice pests and others crop pests.

摘要

近年来,水稻害虫的发生频率不断增加,这极大地影响了世界许多地区的水稻产量。水稻害虫的防治迫在眉睫。针对各种害虫外观差异小、体型变化大的问题,本文提出了一种名为YOLO-GBS的深度神经网络,用于从数字图像中检测和分类害虫。基于YOLOv5s,增加了一个检测头以扩大检测尺度范围,集成了全局上下文(GC)注意力机制以在复杂背景中找到目标,用BiFPN网络取代PANet以提高特征融合效果,并引入Swin Transformer以充分利用全局上下文信息的自注意力机制。在我们包含螟蛾科、夜蛾科、水蝇科和飞虱科的昆虫数据集上的实验结果表明,所提出模型的平均mAP高达79.8%,比YOLOv5s高5.4%,各种复杂场景的检测效果显著提高。此外,本文还分析和讨论了YOLO-GBS模型在更大规模害虫数据集上的泛化能力。该研究为水稻害虫及其他作物害虫提供了一种更准确、高效的智能检测方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/75f1/10056798/84884ddc827d/insects-14-00280-g001.jpg

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