Learning structured behaviour models using variable length Markov models

Aphrodite Galata, Neil Johnson, D. Hogg
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引用次数: 30

Abstract

In recent years there has been an increased interest in the modelling and recognition of human activities involving highly structured and semantically rich behaviour such as dance, aerobics, and sign language. A novel approach is presented for automatically acquiring stochastic models of the high-level structure of an activity without the assumption of any prior knowledge. The process involves temporal segmentation into plausible atomic behaviour components and the use of variable length Markov models for the efficient representation of behaviours. Experimental results are presented which demonstrate the generation of realistic sample behaviours and evaluate the performance of models for long-term temporal prediction.
使用变长马尔可夫模型学习结构化行为模型
近年来,人们对人类活动的建模和识别越来越感兴趣,这些活动涉及高度结构化和语义丰富的行为,如舞蹈、有氧运动和手语。提出了一种无需假设任何先验知识就能自动获取活动高层结构随机模型的新方法。这个过程包括将时间分割成合理的原子行为组件,并使用变长马尔可夫模型来有效地表示行为。实验结果证明了真实样本行为的产生,并评估了模型长期时间预测的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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