For change detection in remote sensing, constructing a training dataset for deep learning models is difficult due to the requirements of bi-temporal supervision. To overcome this issue, single-temporal supervision which treats change labels as the difference of two semantic masks has been proposed. This novel method trains a change detector using two spatially unrelated images with corresponding semantic labels such as building. However, training on unpaired datasets could confuse the change detector in the case of pixels that are labeled unchanged but are visually significantly different. In order to maintain the visual similarity in unchanged area, in this paper, we emphasize that the change originates from the source image and show that manipulating the source image as an after-image is crucial to the performance of change detection. Extensive experiments demonstrate the importance of maintaining visual information between pre- and post-event images, and our method outperforms existing methods based on single-temporal supervision. code is available at https://github.com/seominseok0429/Self-Pair-for-Change-Detection.
翻译:为了在遥感中探测变化,由于双时制监督的要求,很难为深学习模型建立培训数据集。为了克服这一问题,提出了单一时制监督,将变化标签视为两种语义面具的区别。这种新颖的方法用两个空间上无关的图像和相应的语义标签(如建筑)来训练变化探测器。然而,对于标签未变的像素而言,未变的数据集培训可能会混淆变化探测器,但这种像素的标签没有改变,但视觉上却大不相同。为了保持未变的领域的视觉相似性,本文件强调,变化源于源图像,并表明将源图像作为事后图像加以操纵对于变化检测的性能至关重要。广泛的实验表明在活动前和后图像之间保持视觉信息的重要性,而我们的方法超越了以单一时制监督为基础的现有方法。代码见https://github.com/seminseok0429/self-Pair-Chang-Change-setriion。