自适应空间注意力双分支渔船探测网络

Jiaxuan Yang and Xiang Liu
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引用次数: 0

摘要

针对港口环境,渔船目标检测精度较低,容易出现渔船误检和漏检问题。本文提出了一种基于 YOLOX 的渔船目标检测算法 ASDNet。首先,设计了自适应空间注意力模块(ASAM),用于提高渔船目标的检测能力;其次,设计了双分支骨干网络,用于多维渔船特征提取。同时,设计了双边增强融合策略(BFFS)对分支特征进行融合,以提高网络的表征能力;最后,通过引入 Focal-CIOU 损失边界框损失函数对损失函数进行改进,以降低渔船目标检测位置偏差和船体重叠的影响,从而提高检测性能。利用自制渔船数据集对上述方法进行了验证,结果表明精确率(P)和召回率(R)都有很大提高。平均精确率(mAP@50-95)值达到 80.25%,比 YOLOX 的 77.86%高出 2.39%。大大提高了检测精度,满足了渔船目标检测的性能要求,具有一定的工程实用意义。
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Adaptive spatial attention dual-branch fishing boat detection network
Aiming at the harbor environment, the target detection accuracy of fishing vessels is low, and it is prone to the problems of fishing vessel misdetection and omission detection. In this paper, we propose a fishing vessel target detection algorithm called ASDNet based on YOLOX. Firstly, an Adaptive Spatial Attention Module (ASAM) was designed and used to improve the detection of fishing vessel targets; secondly, a two-branch backbone network was designed for multidimensional fishing vessel feature extraction. Meanwhile, a bilateral enhanced fusion strategy (BFFS) is designed to fuse the branch features to improve the characterization ability of the network; finally, the loss function is improved by introducing the Focal-CIOU loss bounding box loss function to reduce the effects of the detection position deviation of the fishing vessel target and the overlap of the vessel hull to improve the detection performance. The above methods are validated using the homemade fishing vessel dataset, and the results show that the precision rate (P) and recall rate (R) are greatly improved. The average precision rate (mAP@50-95) value reaches 80.25%, which is 2.39% higher than that of the 77.86% of the YOLOX. It significantly improves the precision of the detection, meets the requirements of the performance of the target detection of the fishing vessel, and has certain practical significance in engineering.
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