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Factorial HMM and Parallel HMM for Gait Recognition

机译:阶乘HMM和并行HMM用于步态识别

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摘要

Information fusion offers a promising solution to the development of a high-performance classification system. In this paper, the problem of multiple gait features fusion is explored with the framework of the factorial hidden Markov model (FHMM). The FHMM has a multiple-layer structure and provides an alternative to combine several gait features without concatenating them into a single augmented feature. Besides, the feature concatenation is used to directly concatenate the features and the parallel HMM (PHMM) is introduced as a decision-level fusion scheme, which employs traditional fusion rules to combine the recognition results at decision level. To evaluate the recognition performances, McNemar's test is employed to compare the FHMM feature-level fusion scheme with the feature concatenation and the PHMM decision-level fusion scheme. Statistical numerical experiments are carried out on the Carnegie Mellon University motion of body and the Institute of Automation of the Chinese Academy of Sciences gait databases. The experimental results demonstrate that the FHMM feature-level fusion scheme and the PHMM decision-level fusion scheme outperform feature concatenation. The FHMM feature-level fusion scheme tends to perform better than the PHMM decision-level fusion scheme when only a few gait cycles are available for recognition.
机译:信息融合为高性能分类系统的开发提供了有希望的解决方案。本文在阶乘隐马尔可夫模型(FHMM)的框架下探讨了多步态特征融合的问题。 FHMM具有多层结构,并提供了一种替代方案,可以将多个步态特征组合在一起,而不必将它们合并为单个增强特征。此外,使用特征级联直接对特征进行级联,并引入并行HMM(PHMM)作为决策级融合方案,该方案采用传统的融合规则在决策级上组合识别结果。为了评估识别性能,McNemar的测试用于比较FHMM特征级融合方案与特征级联和PHMM决策级融合方案。统计数值实验是在卡内基梅隆大学的人体运动和中科院自动化研究所的步态数据库上进行的。实验结果表明,FHMM特征级融合方案和PHMM决策级融合方案优于特征级联。当只有几个步态周期可用于识别时,FHMM特征级融合方案的性能往往优于PHMM决策级融合方案。

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