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Unsupervised classification and visual representation of situations in surveillance videos using slow feature analysis for situation retrieval applications

机译:使用慢特征分析对情况检索应用进行监视视频中情况的无监督分类和视觉表示

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Today, video surveillance systems produce thousands of terabytes of data. This source of information can be very valuable, as it contains spatio-temporal information about abnormal, similar or periodic activities. However, a search for certain situations or activities in unstructured large-scale video footage can be exhausting or even pointless. Searching surveillance video footage is extremely difficult due to the apparent similarity of situations, especially for human observers. In order to keep this amount manageable and hence usable, this paper aims at clustering situations regarding their visual content as well as motion patterns. Besides standard image content descriptors like HOG, we present and investigate novel descriptors, called Franklets, which explicitly encode motion patterns for certain image regions. Slow feature analysis (SFA) will be performed for dimension reduction based on the temporal variance of the features. By reducing the dimension with SFA, a higher feature discrimination can be reached compared to standard PCA dimension reduction. The effects of dimension reduction via SFA will be investigated in this paper. Cluster results on real data from the Hamburg Harbour Anniversary 2014 will be presented with both, HOG feature descriptors and Franklets. Furthermore, we could show that by using SFA an improvement to standard PCA techniques could be achieved. Finally, an application to visual clustering with self-organizing maps will be introduced.
机译:如今,视频监控系统可产生数千兆兆字节的数据。该信息源非常有价值,因为它包含有关异常,相似或周期性活动的时空信息。但是,在非结构化的大型视频镜头中搜索某些情况或活动可能会很累,甚至毫无意义。由于情况的明显相似性,搜索监视录像非常困难,特别是对于人类观察者而言。为了使此数量易于管理并因此可用,本文旨在针对与视觉内容以及运动模式有关的情况进行聚类。除了像HOG这样的标准图像内容描述符外,我们还介绍并研究了称为Franklet的新颖描述符,该描述符可对某些图像区域的运动模式进行显式编码。将基于特征的时间变化来执行慢速特征分析(SFA),以减少尺寸。与标准PCA尺寸减小相比,通过SFA减小尺寸,可以实现更高的特征判别力。本文将研究通过SFA进行尺寸缩减的效果。来自汉堡港口周年纪念2014的真实数据的聚类结果将与HOG特征描述符和Franklets一起显示。此外,我们可以证明,通过使用SFA,可以实现对标准PCA技术的改进。最后,将介绍用于具有自组织地图的视觉聚类的应用程序。

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