基于改进型YOLOv4的水下目标检测研究

Wang Hao, Nangfeng Xiao
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引用次数: 5

摘要

复杂的水下环境和光照条件使得水下图像存在纹理失真和色彩变化等问题。在本文中,我们提出了一种改进的YOLOv4检测方法,用于检测四种水下生物:海参、棘爪、扇贝、海星和水草。首先,我们对网络结构进行修改,在骨干网络中加入深度可分离卷积,并加入152×152特征映射,有利于小目标的检测。其次,采用k-means聚类算法对数据集中的边界框进行聚类,并根据聚类结果对边界框的大小进行改进;第三,我们提出了一个新的模型(EASPP,空间金字塔池),该模型的复杂度略有增加,但改进效果显著。最后,在训练模型时,采用多尺度训练,更好地训练不同尺度的目标。实验结果表明,在我们的测试集上,改进后的方法在水下目标检测方法中的准确率(AP)比原来的YOLOv4模型提高了4.8%,f1得分比原来的方法提高了5.1%,对于mAP@0.5达到了81.5%,比原来的方法提高了5.6%,可见我们的方法是有效的。
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Research on Underwater Object Detection Based on Improved YOLOv4
The complex underwater environment and lighting conditions make underwater images suffer from texture distortion and color variations. In this paper, we propose an improved YOLOv4 detection method to detect four underwater organisms: holothurian, echinus, scallop, starfish and waterweeds. Firstly, we modified the network structure, added a deep separable convolution to the backbone network, and added a 152×152 feature map, which is conducive to the detection of small targets. Secondly, k-means clustering algorithm is used to cluster the bounding box in the data set, and the size of the bounding box is improved according to the clustering results. Thirdly, we propose a new module (EASPP, Spatial Pyramid Pooling), which increases slightly the model complexity, but the improvement effect is significant. Finally, when training the model, we use multi-scale training to better train targets with different scales. The experimental results show that on our test set, the improved method in the underwater object detection method is 4.8% higher than the original YOLOv4 model in accuracy (AP), the F1-score is 5.1% higher than that of the original method, and for mAP@0.5 it reaches 81.5%, which is 5.6% higher than that of the original method, which can be concluded that our method is effective.
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