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Recognition of human gestures and behaviour based on motion trajectories

机译:基于运动轨迹的人类手势和行为识别

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摘要

Human activities are characterised by the spatio-temporal structure of their motion patterns. Such structures can be represented as temporal trajectories in a high-dimensional feature space of closely correlated measurements of visual observations. Models of such temporal structures need to account for the probabilistic and uncertain nature of motion patterns, their non-linear temporal scaling and ambiguities in temporal segmentation. In this paper, we address such problems by introducing a statistical dynamic framework to model and recognise human activities based on learning prior and continuous propagation of density models of behaviour patterns. Prior is learned from example sequences using hidden Markov models and density models are augmented by current visual observations.
机译:人类活动的特征是其运动方式的时空结构。这样的结构可以表示为视觉观察的紧密相关测量的高维特征空间中的时间轨迹。这种时间结构的模型需要考虑运动模式的概率和不确定性,它们的非线性时间缩放和时间分割中的歧义。在本文中,我们通过引入统计动态框架来解决此类问题,该框架基于学习行为模式密度模型的先验和连续传播来建模和识别人类活动。使用隐藏的马尔可夫模型从示例序列中学习到先验,并且通过当前的视觉观察来增强密度模型。

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