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Hierarchical model for human activity recognition

机译:人类活动识别的层次模型

摘要

The disclosure provides an approach for recognizing and analyzing activities. In one embodiment, a learning application trains parameters of a hierarchical model which represents human (or object) activity at multiple levels of detail. Higher levels of detail may consider more context, and vice versa. Further, learning may be optimized for a user-preferred type of inference by adjusting a learning criterion. An inference application may use the trained model to answer queries about variable(s) at any level of detail. In one embodiment, the inference application may determine scores for each possible value of the query variable by finding the best hierarchical event representation that maximizes a scoring function while fixing the value of the query variable to its possible values. Here, the inference application may approximately determine the best hierarchical event representation by iteratively optimizing one level-of-detail variable at a time while fixing other level-of-detail variables, until convergence.
机译:本公开提供了一种用于识别和分析活动的方法。在一个实施例中,学习应用训练分层模型的参数,该模型代表多个细节级别的人(或对象)活动。较高的详细程度可能会考虑更多的上下文,反之亦然。此外,可以通过调整学习标准来针对用户偏好的推理类型优化学习。推理应用程序可以使用训练有素的模型以任何详细级别回答有关变量的查询。在一个实施例中,推理应用可以通过找到最佳评分事件来确定查询变量的每个可能值的分数,该最佳分层事件表示在将查询变量的值固定为其可能值的同时最大化评分函数。在这里,推理应用程序可以通过迭代一次优化一个详细程度变量,同时固定其他详细程度变量,直到收敛,从而大致确定最佳分层事件表示。

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