Dai Wei, Shi Furong, Wang Xinyu, Xu Haixia, Yuan Liming, Wen Xianbin
Tianjin University of Technology, School of Computer Science and Engineering, Tianjin, 300384, China.
Ministry of Education, Key Laboratory of Computer Vision and System, Tianjin, 300384, China.
Sci Rep. 2024 Sep 27;14(1):22197. doi: 10.1038/s41598-024-73252-8.
Most existing scene classification methods based on remote sensing images tend to ignore important interactive information at different levels in the image. We propose an effective remote sensing scene classification method named multi-scale dense residual correlation network. The method is divided into three parts. First, the multi-stream feature extraction module is introduced which effectively utilizes features at different scales to extract different levels of information. Secondly, the dense residual connected feature fusion technology is proposed, which allows for a wide range of feature fusion. The Correlation Attention Module learn feature representations at multiple levels. This improves classification performance. The method outperforms existing algorithms in terms of effectiveness and accuracy, achieving state-of-the-art results on widely used remote sensing scene classification benchmarks.
大多数现有的基于遥感图像的场景分类方法往往会忽略图像中不同层次的重要交互信息。我们提出了一种有效的遥感场景分类方法,名为多尺度密集残差相关网络。该方法分为三个部分。首先,引入多流特征提取模块,有效利用不同尺度的特征来提取不同层次的信息。其次,提出了密集残差连接特征融合技术,实现了广泛的特征融合。相关注意力模块在多个层次学习特征表示。这提高了分类性能。该方法在有效性和准确性方面优于现有算法,在广泛使用的遥感场景分类基准上取得了领先成果。