Kaixuan JiangJia LiuWenhua ZhangFang LiuLiang Xiao
Deep learning has significantly advanced the change detection in remote sensing image with its excellent performance. For change detection tasks, there are two critical issues. First, with scale variance of different objects in remote sensing images, effectively aggregating multi-scale features helps to generate fine-grained change objects. Second, it is critical but challenging to fully exploit the variance information between bi-temporal images to avoid pseudo-variation and region blurring. To alleviate the above issues, this paper proposes an efficient multi-dimensional attention-aggregation network (MANet), which keeps better feature aggregation while maintaining excellent differential attention ability. This paper carries three main contributions. First, we propose a multiscale asymmetric convolutional attention (MACA) module. Due to the asymmetric convolution's ability to focus on feature contours effectively, the MACA can not only aggregate multi-scale features effectively, but also refine the edge information of features. Second, we propose a dual-dimensional attention (DDA) module for adaptively fusing shallow and deep features, which is used to generate rich feature representations. Third, the difference guidance (DG) module is exploited for enhancing the attention of changed regions to mitigate the influence of uncorrelated changes on the change detection result. Experiments on four popular change detection datasets show that our network can accomplish higher detection accuracy than the state-of-the-art networks.
Yiming ZhangMingliang XueYao LuXuan LiangPengyuan NiuXueqian WangYou He
Wang Zhong-chenGuowei GuMin XiaLiguo WengKai Hu
Di LuLiejun WangShuli ChengYongming LiAnyu Du
Kaiqiang SongFengzhi CuiJie Jiang
Beibei KongQinglong MengFengqi HaoJinqiang Bai