Change detection (CD) aims to find the difference between two images at different times and outputs a change map to represent whether the region has changed or not. To achieve a better result in generating the change map, many State-of-The-Art (SoTA) methods design a deep learning model that has a powerful discriminative ability. However, these methods still get lower performance because they ignore spatial information and scaling changes between objects, giving rise to blurry or wrong boundaries. In addition to these, they also neglect the interactive information of two different images. To alleviate these problems, we propose our network, the Scale and Relation-Aware Siamese Network (SARAS-Net) to deal with this issue. In this paper, three modules are proposed that include relation-aware, scale-aware, and cross-transformer to tackle the problem of scene change detection more effectively. To verify our model, we tested three public datasets, including LEVIR-CD, WHU-CD, and DSFIN, and obtained SoTA accuracy. Our code is available at https://github.com/f64051041/SARAS-Net.
翻译:变化探测(CD)旨在在不同时间找到两种图像与输出结果之间的差别,一种是显示该区域是否已经变化的改变地图。为了取得更佳的结果,许多艺术状态(SoTA)方法设计了一个具有强大歧视能力的深层次学习模式。然而,这些方法的性能仍然较低,因为它们忽视空间信息,缩小物体之间的变化,导致模糊或错误的界限。除此之外,它们还忽视了两种不同图像的互动信息。为了缓解这些问题,我们建议我们的网络,即SACAS-Net(SAS-Net),以处理这一问题。在本文中,建议采用三个模块,包括连接、比例和交叉转换,以更有效地处理场景变化探测问题。为了验证我们的模型,我们测试了三个公共数据集,包括LEVIR-CD、WHU-CD和DSFIN,并获得了SoTA的准确性。我们的代码可在 https://github.com/f64051/SARAS-Net上查阅。