%0 Journal Article %T 基于多尺度特征增强的遥感图像目标检测方法
Remote Sensing Image Object Detection Algorithm Based on Multi-Scale Feature Enhancement %A 宋智超 %A 李筠 %A 杨海马 %A 刘瑾 %A 金焱 %J Software Engineering and Applications %P 309-317 %@ 2325-2278 %D 2023 %I Hans Publishing %R 10.12677/SEA.2023.122031 %X 针对遥感图像目标检测中存在的背景复杂、目标像素数少以及目标尺度变化大等问题,本文提出一种基于多尺度特征增强的遥感图像目标检测方法。首先,使用具有高分辨率输出的HRNet网络替换ResNet作为主干网络,强化对遥感目标位置信息的提取;其次,在HRNet中引入注意力机制,抑制复杂背景噪声的干扰;最后,设计多尺度特征增强金字塔网络,进一步增强网络的多尺度特征信息表达。实验结果表明,相较于原始Cascade R-CNN目标检测方法,所提方法的目标检测均值平均精度提高了5.32%;在与经典目标检测方法的对比实验中,所提方法也表现出较好的检测性能。
To address the problems of complex image background, small number of object pixels and large variation of object scale in remote sensing image object detection, we propose a remote sensing image object detection method based on multi-scale feature enhancement. First, the HRNet network with high-resolution output is used to replace ResNet to strengthen the backbone network to obtain the location of remote sensing objects; second, the attention mechanism is introduced into HRNet to suppress the interference of complex background noise; finally, the multi-scale feature-enhanced pyramid network is designed to further enhance the multi-scale information representation of the pyramid network. The results of the experiment show that compared with the Cascade R-CNN object detection method, the mean accuracy of the proposed method is improved by 5.32%, and the proposed method also shows better detection performance in comparison with the classical object detection method. %K 目标检测,多尺度特征增强金字塔,注意力机制,遥感图像,HRNet
Object Detection %K Multi-Scale Feature-Enhanced Pyramid %K Attention Mechanism %K Remote Sensing Image %K HRNet %U http://www.hanspub.org/journal/PaperInformation.aspx?PaperID=64334