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Dynamic scene understanding by improved sparse topical coding

机译:通过改进的稀疏主题编码实现动态场景理解

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摘要

The explosive growth of cameras in public areas demands a technique which develops a fully automated surveillance and monitoring system. In this paper, we propose a novel unsupervised approach to automatically explore motion patterns occurring in dynamic scenes under an improved sparse topical coding (STC) framework. Given an input video, it is segmented into a sequence of clips without overlapping. Optical flow features are extracted from each pair of consecutive frames, and quantized into discrete visual flow words. Each video clip is interpreted as a document and visual flow words as words within the document. Then the improved STC is applied to explore latent patterns which represent the common motion distributions of the scene. Finally, each video clip is represented as a weighted summation of these patterns with only a few non-zero coefficients. The proposed approach is purely data-driven and scene independent, which make it suitable for very large range applications of scenarios, such as rule mining and abnormal event detection. Experimental results and comparisons on various public datasets demonstrate the promise of the proposed approach.
机译:摄像机在公共区域的爆炸性增长需要一种开发全自动监视和监视系统的技术。在本文中,我们提出了一种新颖的无监督方法,可以在改进的稀疏主题编码(STC)框架下自动探索动态场景中发生的运动模式。给定输入视频,它被分割为一系列片段,没有重叠。从每对连续的帧中提取光流特征,并将其量化为离散的视觉流词。每个视频剪辑都被解释为一个文档,视觉流单词被解释为文档中的单词。然后,将改进的STC应用于探索表示场景常见运动分布的潜在模式。最后,每个视频剪辑都表示为这些模式的加权总和,仅包含几个非零系数。所提出的方法是完全由数据驱动的且与场景无关的,这使其适用于非常大范围的场景应用,例如规则挖掘和异常事件检测。实验结果和对各种公共数据集的比较证明了该方法的前景。

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