Small-target water-floating garbage detection and recognition based on UNet-YOLOv5s

Longxuan Ma, Baijing Wu, Jianwei Deng, Jing Lian
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引用次数: 0

Abstract

To address the problem of low recognition accuracy caused by the interference of illumination, water waves and complex backgrounds in the process of detecting and recognizing small-target of water-floating garbage, a water-floating garbage recognition algorithm that fuses image semantic segmentation network and target detection network is proposed. Firstly, using UNet network, the water floating garbage is segmented from the complex background and the image is cropped into a uniform size image. Then, a dark channel prior algorithm is used for noise removal, which cuts down the interference of illumination and water waves. Finally, eight categories of water floating garbage are defined from the perspective of the relationship between the degree of contamination and recyclability of water-floating garbage, and according to this classification, the improved YOLOv5s network is trained to achieve the detection and recognition of water-floating garbage. The results show that the proposed algorithm has 89.80% detection and recognition accuracy, 85.76% recall and 87.73% F1score, which can effectively improve the detection and recognition accuracy of water-floating garbage and provide a new and effective method for the management of water-floating garbage.
基于UNet-YOLOv5s的小目标浮水垃圾检测与识别
针对水上漂浮垃圾小目标检测识别过程中受光照、水波和复杂背景干扰导致识别精度低的问题,提出了一种融合图像语义分割网络和目标检测网络的水上漂浮垃圾识别算法。首先,利用UNet网络从复杂背景中分割出水面漂浮垃圾图像,并将图像裁剪成大小一致的图像;然后,采用暗信道先验算法进行去噪,降低了光照和水波的干扰;最后,从水浮垃圾的污染程度与可回收性的关系出发,定义了8类水浮垃圾,并以此分类训练改进的YOLOv5s网络,实现对水浮垃圾的检测与识别。结果表明,本文提出的算法检测识别准确率为89.80%,召回率为85.76%,F1score为87.73%,能够有效提高对浮水垃圾的检测识别准确率,为浮水垃圾的治理提供了一种新的有效方法。
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