Detecting small targets at range is difficult because there is not enough spatial information present in an image sub-region containing the target to use correlation-based methods to differentiate it from dynamic confusers present in the scene. Moreover, this lack of spatial information also disqualifies the use of most state-of-the-art deep learning image-based classifiers. Here, we use characteristics of target tracks extracted from video sequences as data from which to derive distinguishing topological features that help robustly differentiate targets of interest from confusers. In particular, we calculate persistent homology from time-delayed embeddings of dynamic statistics calculated from motion tracks extracted from a wide field-of-view video stream. In short, we use topological methods to extract features related to target motion dynamics that are useful for classification and disambiguation and show that small targets can be detected at range with high probability.
翻译:在射程上探测小目标很困难,因为在图像分区中,没有足够的空间信息显示目标使用基于关联的方法,将其与现场的动态混杂者区分开来;此外,这种缺乏空间信息还分散了大多数最先进的深层学习图像分类器的使用。在这里,我们使用从视频序列中提取的目标轨特征作为数据,从中得出有助于将有兴趣的目标与混淆者区别开来的不同地形特征。特别是,我们从从从广泛的视野视频流中提取的运动轨迹中计算出的动态统计数据的延时嵌入中计算出持续的同系现象。简而言之,我们使用地形学方法提取与目标运动动态有关的特征,这些特征有助于分类和脱色,并表明可以在高概率的射程中检测到小目标。