基于上下文信息和注意力的遥感中的小物体检测

Hua-Ping Zhou Hua-Ping Zhou, Jie Zhang Hua-Ping Zhou, Ke-Lei Sun Jie Zhang, Qi-Fen Wen Ke-Lei Sun, Qi Zhao Qi-Fen Wen, Ying-Jie Guo Qi Zhao
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引用次数: 0

摘要

遥感图像中会出现许多小物体,例如车辆和小型船只。然而,小物体检测一直是遥感技术中一项具有挑战性的任务,因为小物体很容易被遗漏并受到背景的影响。针对这一难题,我们提出了一种基于上下文信息和注意力的检测方法,主要分为两部分。首先,为了进一步完善主干网络特征,以获取更多的背景信息,我们构建了一个多分支特征增强模块,对多个感知场特征进行融合,以提高主干网络提取特征信息的能力;其次,我们提出了一种新的有效通道注意力机制,以减少特征融合过程中产生的信息混淆等问题,从而降低背景的影响。与其他方法相比,它有效地提高了遥感图像中小物体的检测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small Object Detection in Remote Sensing Based on Contextual Information and Attention
Many small objects, for instance vehicles and small ships, are encountered in remotely sensed images. However, small object detection has been a challenging task in remote sensing because of the problem that small objects are easily missed and influenced by the background. To address this challenge, we propose a detection method based on contextual information and attention, divided into two main parts. Firstly, for purpose of further improve the backbone network features to derive more contextual information, a multi-branch feature enhancement module is constructed to fuse multiple sensory field features to improve the ability of the backbone network to extract feature information; secondly, a new effective channel attention mechanism is proposed to reduce problems such as information confusion caused by the feature fusion process, thus reducing the influence of the background. Compared with other methods, it effectively improves the detection of small object among remote sensing images.  
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