Most change detection methods assume that pre-change and post-change images are acquired by the same sensor. However, in many real-life scenarios, e.g., natural disaster, it is more practical to use the latest available images before and after the occurrence of incidence, which may be acquired using different sensors. In particular, we are interested in the combination of the images acquired by optical and Synthetic Aperture Radar (SAR) sensors. SAR images appear vastly different from the optical images even when capturing the same scene. Adding to this, change detection methods are often constrained to use only target image-pair, no labeled data, and no additional unlabeled data. Such constraints limit the scope of traditional supervised machine learning and unsupervised generative approaches for multi-sensor change detection. Recent rapid development of self-supervised learning methods has shown that some of them can even work with only few images. Motivated by this, in this work we propose a method for multi-sensor change detection using only the unlabeled target bi-temporal images that are used for training a network in self-supervised fashion by using deep clustering and contrastive learning. The proposed method is evaluated on four multi-modal bi-temporal scenes showing change and the benefits of our self-supervised approach are demonstrated.
翻译:多数变化检测方法假定,改变前和变化后图像是由同一个传感器获得的。然而,在许多真实生活中的情景中,例如自然灾害中,使用发生事件前后现有的最新图像更为实际,这些图像可能使用不同的传感器获得。特别是,我们感兴趣的是光学和合成孔径雷达(SAR)传感器获得的图像的组合。合成孔径雷达图像即使捕捉到同一场景,也与光学图像似乎大不相同。除此之外,改变检测方法往往受限制,只使用目标图像、没有标签的数据和没有附加标签的数据。这些制约因素限制了传统受监督机器学习的范围和用于多传感器或变化检测的不受监督的基因化方法。最近自我监督的学习方法的迅速发展表明,其中一些甚至只能用很少的图像发挥作用。在这项工作中,我们建议了一种多感应感变探测方法,仅使用未标的双时态图像,用于培训四种自我超越式的网络,通过深层的分组和对比式学习方法展示了我们多式图像的自我调整方法。