Satellite image change detection aims at finding occurrences of targeted changes in a given scene taken at different instants. This task is highly challenging due to the acquisition conditions and also to the subjectivity of changes. In this paper, we investigate satellite image change detection using active learning. Our method is interactive and relies on a question and answer model which asks the oracle (user) questions about the most informative display (dubbed as virtual exemplars), and according to the user's responses, updates change detections. The main contribution of our method consists in a novel adversarial model that allows frugally probing the oracle with only the most representative, diverse and uncertain virtual exemplars. The latter are learned to challenge the most the trained change decision criteria which ultimately leads to a better re-estimate of these criteria in the following iterations of active learning. Conducted experiments show the out-performance of our proposed adversarial display model against other display strategies as well as the related work.
翻译:卫星图象变化探测旨在发现在不同瞬间对特定场景进行定向变化的情况。 由于获取条件和变化的主观性,这一任务具有高度挑战性。 在本文中,我们通过积极学习对卫星图像变化探测进行调查。我们的方法是互动的,并依赖于一个问答模型,该模型向神器(用户)询问信息最丰富的显示(虚拟示意图),根据用户的答复,更新变化探测。我们方法的主要贡献在于一个新的对抗模型,该模型只允许以最有代表性、最多样化和最不确定的虚拟显示器对触角进行节制,后者学会挑战最经过培训的改变决定标准,最终导致在积极学习的迭代中更好地重新估计这些标准。进行实验显示我们提议的对抗显示模型与其他显示策略和相关工作相比的外向性表现。