Similarity Mask Mixed Attention for YOLOv5 Small Ship Detection of Optical Remote Sensing Images

Xiaowen Zhang, S. Yuan, F. Luan, Jiaqi Lv, Guifu Liu
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Abstract

Ship detection has always been an important and challenging task. Small ship targets and complex backgrounds in optical remote sensing images can both lead to false alarms and missed alarms in detection. The YOLO series algorithms have been widely used in optical remote sensing ship target detection, which has the advantage of fast detection speed. However, the YOLO series algorithms have poor detection performance when facing small targets. Therefore, we propose a new algorithm, SMMA-YOLOv5, which can improve the model detection accuracy without significantly increasing the model size. We first introduce a self-attention mechanism to replace some of the convolutional layers to capture the global information of the feature map. Second, we integrate an efficient channel attention (ECA) model to the self-attention mechanism to enable information interaction between channels without adding additional computational overhead. Furthermore, we propose a new similarity mask structure to filter out the invalid regions in the feature map based on the elements’ similarity. The experiments on the public MASATI ship dataset indicate that SMMA-YOLOv5 improves Precision by 3.9%, Recall by 5.3%, and AP by 5.4%, and prove the effectiveness of the algorithm while maintaining real-time detection.
基于相似掩模混合关注的YOLOv5型小型船舶光学遥感图像检测
船舶探测一直是一项重要而富有挑战性的任务。光学遥感图像中舰船目标小,背景复杂,容易导致误报和漏报。YOLO系列算法在光学遥感舰船目标检测中得到了广泛的应用,具有检测速度快的优点。然而,YOLO系列算法在面对小目标时检测性能较差。因此,我们提出了一种新的算法SMMA-YOLOv5,它可以在不显著增加模型尺寸的情况下提高模型检测精度。我们首先引入自关注机制来取代一些卷积层来捕获特征映射的全局信息。其次,我们将有效的通道注意(ECA)模型集成到自注意机制中,在不增加额外计算开销的情况下实现通道之间的信息交互。在此基础上,提出了一种新的相似度掩模结构,根据元素的相似度来过滤特征映射中的无效区域。在MASATI船舶公开数据集上的实验表明,SMMA-YOLOv5在保持检测实时性的前提下,将Precision提高3.9%,Recall提高5.3%,AP提高5.4%,证明了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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