基于改进YOLOX_s的舰船目标检测算法

Yuchao Wang, Jingdong Li, Zixiang Tia, Zeming Chen, Huixuan Fu
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引用次数: 1

摘要

目标检测作为船舶智能导航的重要组成部分,提高目标检测的速度和精度可以保证船舶的安全航行。针对舰船目标检测精度低的问题,提出了一种改进的YOLOX_s网络舰船目标检测算法。首先,将空间注意模块(Spatial Attention Module, SAM)集成到YOLOX_s骨干网中,从空间维度聚焦待检测目标,提高检测精度;然后,用Focal Loss损失函数代替传统的BCE Loss损失函数,有效地缓解了单级目标探测器正负样本不平衡的问题。实验结果表明,改进的YOLOX_s算法的检测精度比原算法提高了3.50%,检测速度仅为1。低62 ms。在不显著降低检测速度的情况下,有效提高了舰船目标检测精度,证明了改进的YOLOX_s算法的有效性。
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Ship Target Detection Algorithm Based on Improved YOLOX_s
As an important part of ship intelligent navigation, improving the speed and accuracy of target detection can ensure the safe navigation of ships. Aiming at the low accuracy of ship target detection, an improved YOLOX_s network ship target detection algorithm is proposed. First, the Spatial Attention Module (SAM) is integrated into the YOLOX_s backbone network to focus on the target to be detected from the spatial dimension and improve the detection accuracy. Then, the Focal Loss loss function is used to replace the traditional BCE Loss loss function, which effectively alleviates the problem of unbalanced positive and negative samples of the single-stage target detector. The experimental results show that the detection accuracy of the improved YOLOX_s algorithm is 3.50% higher than the original algorithm, and the detection speed is only 1. 62ms lower. Without significantly reducing the detection speed, the ship target detection accuracy is effectively improved, which proves the effectiveness of the improved YOLOX_s algorithm.
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