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Video monitoring system employing hierarchical hidden markov model (HMM) event learning and classification

机译:使用分层隐马尔可夫模型(HMM)事件学习和分类的视频监控系统

摘要

A method and apparatus are disclosed for automatically learning and identifying events in image data using hierarchical HMMs to define and detect one or more events. The hierarchical HMMs include multiple paths that encompass variations of the same event. Hierarchical HMMs provide a framework for defining events that may be exhibited in various ways. Each event is modeled in the hierarchical HMM with a set of sequential states that describe the paths in a high-dimensional feature space. These models can then be used to analyze video sequences to segment and recognize each individual event to be recognized. The hierarchical HMM is generated during a training phase, by processing a number of images of the event of interest in various ways, typically observed from multiple viewpoints.
机译:公开了一种用于使用分层HMM来自动学习和识别图像数据中的事件以定义和检测一个或多个事件的方法和装置。分层HMM包含多个路径,这些路径包含同一事件的变体。分层HMM提供了一个框架,用于定义可以以各种方式显示的事件。每个事件都在分层HMM中建模,具有一组顺序状态,这些状态描述了高维特征空间中的路径。然后,这些模型可用于分析视频序列,以分割和识别要识别的每个事件。分层HMM是在训练阶段通过以各种方式(通常是从多个视点观察到)处理感兴趣事件的许多图像而生成的。

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