A framework for motion recognition with applications to American sign language and gait recognition

Christian Vogler, H. C. Sun, Dimitris N. Metaxas
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引用次数: 37

Abstract

Human motion recognition has many important applications, such as improved human-computer interaction and surveillance. A big problem that plagues this research area is that human movements can be very complex. Managing this complexity is difficult. We turn to American sign language (ASL) recognition to identify general methods that reduce the complexity of human motion recognition. We present a framework for continuous 3D ASL recognition based on linguistic principles, especially the phonology of ASL. This framework is based on parallel hidden Markov models (HMMs), which are able to capture both the sequential and the simultaneous aspects of the language. Each HMM is based on a single phoneme of ASL. Because the phonemes are limited in number, as opposed to the virtually unlimited number of signs that can be composed from them, we expect this framework to scale well to larger applications. We then demonstrate the general applicability of this framework to other human motion recognition tasks by extending it to gait recognition.
运动识别框架及其在美国手语和步态识别中的应用
人体运动识别具有许多重要的应用,如改进人机交互和监视。困扰这一研究领域的一个大问题是,人类的运动可能非常复杂。管理这种复杂性是困难的。我们转向美国手语(ASL)识别,以确定降低人类动作识别复杂性的一般方法。我们提出了一个基于语言学原理的连续三维美国手语识别框架,特别是美国手语的音韵学。该框架基于并行隐马尔可夫模型(hmm),它能够捕获语言的顺序和同步方面。每个HMM都是基于一个单一的美国手语音素。因为音素在数量上是有限的,而不是由音素组成的无限数量的符号,我们期望这个框架可以很好地扩展到更大的应用程序中。然后,我们通过将该框架扩展到步态识别来证明该框架在其他人类运动识别任务中的一般适用性。
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