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An effective video processing pipeline for crowd pattern analysis

机译:用于人群模式分析的有效视频处理管道

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With the purpose of automatic detection of crowd patterns including abrupt and abnormal changes, a novel approach for extracting motion “textures” from dynamic Spatio-Temporal Volume (STV) blocks formulated by live video streams has been proposed. This paper starts from introducing the common approach for STV construction and corresponding Spatio-Temporal Texture (STT) extraction techniques. Next the crowd motion information contained within the random STT slices are evaluated based on the information entropy theory to cull the static background and noises occupying most of the STV spaces. A preprocessing step using Gabor filtering for improving the STT sampling efficiency and motion fidelity has been devised and tested. The technique has been applied on benchmarking video databases for proof-of-concept and performance evaluation. Preliminary results have shown encouraging outcomes and promising potentials for its real-world crowd monitoring and control applications.
机译:为了自动检测包括突然和异常变化的人群模式,提出了一种从实时视频流制定的动态时空体积(STV)块中提取运动“纹理”的新方法。本文从介绍STV构建的通用方法和相应的时空纹理(STT)提取技术开始。接下来,基于信息熵理论评估随机STT切片中包含的人群运动信息,以消除占据大部分STV空间的静态背景和噪声。已经设计和测试了使用Gabor滤波来提高STT采样效率和运动保真度的预处理步骤。该技术已应用于基准视频数据库,以进行概念验证和性能评估。初步结果显示,其现实人群监控应用具有令人鼓舞的成果和潜力。

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