人类活动的随机时间模型

M. Walter, S. Gong, A. Psarrou
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引用次数: 8

摘要

人类活动以其运动模式的时空结构为特征。这种结构是概率性的,而且往往相当模糊。像静态模板这样的时空结构建模可能对噪声非常敏感,并且无法捕捉由不同主体执行同一行为引起的观测测量变化。本文引入了用一阶马尔可夫过程描述统计动态系统建模时间结构的概念。从训练序列中学习先验知识,通过密度分布的连续传播进行识别。考虑当前的观测值来临时增强学习到的先验,可以以更少的计算成本获得更准确的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic temporal models of human activities
Human activities are characterised by the spatio-temporal structure of their motion pattern. Such structures are probabilistic and often rather ambiguous. Modelling such spatio-temporal structures as static templates can be very sensitive to noise and cannot capture variations in observation measurements caused by different subjects performing the same act. In this paper we introduce the concept of modelling temporal structures by statistical dynamic systems using first-order Markov process descriptions. Prior knowledge is learned from training sequences and recognition is performed through continuous propagation of density distributions. Taking current observations into account to temporarily augment the learned prior leads to more accurate recognition with less computational costs.
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