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Recognition and Incremental Learning of Scenario-Oriented Human Behavior Patterns by Two Threshold Models

机译:通过两个阈值模型来识别和增量学习情景的人体行为模式

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Two HMM-based threshold models are suggested for recognition and incremental learning of scenario-oriented human behavior patterns. One is the expected behavior threshold model to discriminate if a monitored behavior pattern is normal or not. The other model is the registered behavior threshold model to detect whether such behavior pattern is already learned. If a behavior patten is detected as a new one, an HMM is generated to represent the pattern, and then the HMM is used to update behavior clusters by hierarchical clustering process.
机译:提出了两个基于赫姆的阈值模型,用于识别和增量学习方案的人行为行为模式。一个是如果监控行为模式是正常的,则识别预期行为阈值模型。其他模型是登记行为阈值模型,以检测是否已经学习了这种行为模式。如果检测到行为PATTEN作为新一个,则生成HMM以表示模式,然后使用分层聚类过程来使用HMM来更新行为群集。

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