We introduce in this paper a novel active learning algorithm for satellite image change detection. The proposed solution is interactive and based on a question and answer model, which asks an oracle (annotator) the most informative questions about the relevance of sampled satellite image pairs, and according to the oracle's responses, updates a decision function iteratively. We investigate a novel framework which models the probability that samples are relevant; this probability is obtained by minimizing an objective function capturing representativity, diversity and ambiguity. Only data with a high probability according to these criteria are selected and displayed to the oracle for further annotation. Extensive experiments on the task of satellite image change detection after natural hazards (namely tornadoes) show the relevance of the proposed method against the related work.
翻译:在本文中,我们引入了一个用于探测卫星图像变化的新颖的积极学习算法。提议的解决办法是交互式的,基于问答模型,该模型向一个神器(注解者)询问关于抽样卫星图像配对相关性的最丰富的信息问题,根据神器的答复,我们反复更新决定功能。我们调查了一个新颖的框架,用以模拟样本的相关性概率;这一概率是通过最大限度地减少一个客观功能捕捉代表性、多样性和模糊性获得的。只有根据这些标准具有高概率的数据才能被选中并展示给神器作进一步的注解。关于自然灾害后卫星图像变化探测任务的广泛实验(即龙卷风)表明拟议方法与相关工作的相关性。