利用 YOLOv5s 的三重注意力机制进行鱼类探测

Fishes Pub Date : 2024-04-23 DOI:10.3390/fishes9050151
Wei Long, Yawen Wang, Lingxi Hu, Jintao Zhang, Chen Zhang, Linhua Jiang, Lihong Xu
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引用次数: 0

摘要

传统的养鱼方式存在生产落后、效率低、产量低、环境污染等问题。经过深度学习技术的深入研究,工业化水产养殖模型逐渐成熟。由于各种复杂因素的影响,难以提取有效特征,导致模型性能不尽如人意。本文提出了一种鱼类检测方法,该方法结合了三重注意力机制和只看一次(TAM-YOLO)模型。为了提高模型训练速度,数据封装过程中加入了正样本匹配。为了提高模型的鲁棒性,在训练过程中加入了指数移动平均(EMA),并在 YOLOv5s 骨干中集成了协调注意(CA)和卷积块注意模块,以加强通道和空间位置的特征提取。提取的特征图输入 PANet 路径聚合网络,底层信息与特征图叠加。该方法提高了水下模糊和扭曲鱼类图像的检测精度。实验结果表明,所提出的 TAM-YOLO 模型优于 YOLOv3、YOLOv4、YOLOv5s、YOLOv5m 和 SSD,mAP 值达到 95.88%,从而为鱼类检测提供了一种新策略。
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Triple Attention Mechanism with YOLOv5s for Fish Detection
Traditional fish farming methods suffer from backward production, low efficiency, low yield, and environmental pollution. As a result of thorough research using deep learning technology, the industrial aquaculture model has experienced gradual maturation. A variety of complex factors makes it difficult to extract effective features, which results in less-than-good model performance. This paper proposes a fish detection method that combines a triple attention mechanism with a You Only Look Once (TAM-YOLO)model. In order to enhance the speed of model training, the process of data encapsulation incorporates positive sample matching. An exponential moving average (EMA) is incorporated into the training process to make the model more robust, and coordinate attention (CA) and a convolutional block attention module are integrated into the YOLOv5s backbone to enhance the feature extraction of channels and spatial locations. The extracted feature maps are input to the PANet path aggregation network, and the underlying information is stacked with the feature maps. The method improves the detection accuracy of underwater blurred and distorted fish images. Experimental results show that the proposed TAM-YOLO model outperforms YOLOv3, YOLOv4, YOLOv5s, YOLOv5m, and SSD, with a mAP value of 95.88%, thus providing a new strategy for fish detection.
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