Lightweight YOLOV4 algorithm for underwater whale detection

Lili He, Defeng Du, Hongtao Bai, Kai Wang
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Abstract

At present, it is difficult to implement on-line detection on underwater equipment due to the large model of biometric algorithm. In this paper, a YOLOv4 lightweight whale detection algorithm suitable for embedded equipment is proposed. MobileNetv3 was used as the backbone network of YOLOv4 to reduce the network scale, and the neck and head network were optimized by Depthwise Separable Convolutional to achieve lightweight feature extraction. Experimental results on whale data set show that compared with YOLOv4 algorithm, the number of network parameters is reduced by 87.2%, and the detection speed is improved by 1.65 times under GPU-only and 12.56 times under CPU-only. The method presented in this paper can theoretically implement underwater whale on-line detection in embedded devices.
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轻量级YOLOV4算法水下鲸鱼检测
目前,由于生物识别算法模型庞大,难以对水下设备进行在线检测。本文提出了一种适用于嵌入式设备的YOLOv4轻量级鲸鱼检测算法。采用MobileNetv3作为YOLOv4的骨干网络,减小网络规模,对颈部和头部网络进行深度可分卷积优化,实现轻量化特征提取。鲸鱼数据集上的实验结果表明,与YOLOv4算法相比,网络参数数量减少了87.2%,检测速度在仅gpu下提高了1.65倍,在仅cpu下提高了12.56倍。本文提出的方法理论上可以实现嵌入式设备中水下鲸鱼的在线检测。
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