Instance Segmentation of Ship Objects in Remote Sensing Images Based on Attention Mechanism

Bosong Chai, Heyu Gao, Yuandan Feng, Chenming Cui
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Abstract

Detection and segmentation of ship targets in remote sensing images is a research hotspot in the field of computer vision. However, due to the large coverage area of sea surface remote sensing images, the complex and changeable environment of the ship target, such as cloud interference, coastal buildings, navigation ripples, the ship causes low detection and segmentation effect. In this paper, we propose an attention module-based method for background noise processing in remote sensing images. To solve the problem of complex background features and noise interference in remote sensing images, this paper introduces an attention module to suppress noise and other interfering features in the complex background by using channel attention mechanism and spatial attention mechanism, which can enhance the network's ability to extract object features, and improve the detection and segmentation effect of the network on remote sensing images. Firstly, we introduce Group Convolution into the original Residual Network to enhance the feature representation capability of the model. Secondly, Swish activation function with better performance in deep network is introduced to replace ReLU activation function in original Residual Network to improve the accuracy of ship detection and segmentation. Finally, in view of the complex environment of ships in remote sensing images and the problem of noise interference, we introduce attention mechanism to suppress the interference area and highlight the characteristics of ship areas. The experimental results show that with the improved method, the average accuracy (AP) of ship detection and segmentation has increased from 70.7% and 62.0% to 76.8% and 66.4%, respectively.
基于注意机制的遥感图像船舶目标实例分割
遥感图像中船舶目标的检测与分割是计算机视觉领域的一个研究热点。然而,由于海面遥感图像覆盖面积大,船舶目标所处的环境复杂多变,如云干扰、海岸建筑物、航行波纹等,对船舶的检测和分割效果较低。本文提出了一种基于注意模块的遥感图像背景噪声处理方法。为了解决遥感图像中复杂背景特征和噪声干扰问题,本文引入了注意模块,利用通道注意机制和空间注意机制抑制复杂背景中的噪声和其他干扰特征,增强了网络对目标特征的提取能力,提高了网络对遥感图像的检测和分割效果。首先,在原残差网络中引入群卷积,增强模型的特征表示能力;其次,引入深度网络中性能较好的Swish激活函数,取代原残差网络中的ReLU激活函数,提高船舶检测和分割的精度;最后,针对遥感图像中船舶所处的复杂环境和噪声干扰问题,引入注意机制抑制干扰区域,突出船舶区域特征。实验结果表明,改进后的方法将船舶检测和分割的平均准确率(AP)分别从70.7%和62.0%提高到76.8%和66.4%。
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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