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RIMOC, a feature to discriminate unstructured motions: Application to violence detection for video-surveillance

机译:RIMOC,用于区分非结构化动作的功能:应用于视频监视的暴力检测

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摘要

In video-surveillance, violent event detection is of utmost interest. Although action recognition has been well studied in computer vision, literature for violence detection in video is far sparser, and even more for surveillance applications. As aggressive events are difficult to define due to their variability and often need high-level interpretation, we decided to first try to characterize what is frequently present in video with violent human behaviors, at a low level: jerky and unstructured motion. Thus, a novel problem-specific Rotation-Invariant feature modeling MOtion Coherence (RIMOC) was proposed, in order to capture its structure and discriminate the unstructured motions. It is based on the eigenvalues obtained from the second-order statistics of the Histograms of Optical Flow vectors from consecutive temporal instants, locally and densely computed, and further embedded into a spheric Riemannian manifold. The proposed RIMOC feature is used to learn statistical models of normal coherent motions in a weakly supervised manner. A multi-scale scheme applied on an inference-based method allows the events with erratic motion to be detected in space and time, as good candidates of aggressive events. We experimentally show that the proposed method produces results comparable to a state-of-the-art supervised approach, with added simplicity in training and computation. Thanks to the compactness of the feature, real-time computation is achieved in learning as well as in detection phase. Extensive experimental tests on more than 18 h of video are provided in different in-lab and real contexts, such as railway cars equipped with on-board cameras.
机译:在视频监视中,最重要的是检测暴力事件。尽管在计算机视觉中已经很好地研究了动作识别,但是有关视频中暴力检测的文献很少,甚至在监视应用中也更多。由于攻击性事件因其可变性而难以定义,并且通常需要高层次的解释,因此我们决定首先尝试以较低的层次来刻画视频中经常出现的具有暴力人类行为的内容:生涩且无结构的运动。因此,提出了一种新颖的问题特定的旋转不变特征建模运动相干性(RIMOC),以捕获其结构并区分非结构化运动。它基于从连续时间瞬时的光流矢量直方图的二阶统计量中获得的特征值,这些特征值是在局部且密集地计算出来的,并进一步嵌入到球形黎曼流形中。所建议的RIMOC功能用于以弱监督的方式学习正常相干运动的统计模型。应用于基于推理的方法的多尺度方案允许在时空上检测出运动不稳定的事件,作为攻击性事件的良好候选者。我们通过实验证明,所提出的方法产生的结果可与最新的监督方法相媲美,并且在训练和计算方面更加简单。由于功能的紧凑性,可以在学习以及检测阶段实现实时计算。在不同的实验室环境和实际环境中,例如在配备车载摄像头的铁路车厢中,对超过18小时的视频进行了广泛的实验测试。

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