Recognition and classification of human motion based on hidden Markov model for motion database

Y. Ohnishi, S. Katsura
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引用次数: 1

Abstract

In some countries, many problems according to aging are pointed out. Decrease of worker's physical ability is one of them. The old workers have high techniques, but physical ability is lower than that of young workers. And it becomes difficult to keep high quality. Hence it is thought that a power assist by robot is needed. The method that increases human motion simply is mainstream conventional power assist method. However, to assist accurately it is thought that robot has to recognize human motion and has to assist fitly. Hence, the system that save and reproduce human motion “motion database” is necessary. Here, to assist accurately, the motion which includes force information is saved to database. In this research, the trajectory information and the force information of human motion is extracted by using bilateral control and it is modeled. To reproduce appropriate motion from database, a search system is needed. For adapting power assist, the search system should be real-time and be able to search at all times. Therefore, in this research, a real-time motion searching method is proposed. The searching method is based on hidden Markov model because human motion has Markov property. Proposed method can search human motion on real-time while human does motion. The viability of proposed method is confirmed by motion search experiment.
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基于运动数据库隐马尔可夫模型的人体运动识别与分类
一些国家针对老龄化问题提出了许多问题。工人体力的下降就是其中之一。老工人技术水平高,但体力不如青年工人。而且很难保持高质量。因此,人们认为需要机器人的动力辅助。简单增加人体运动的方法是主流的常规动力辅助方法。然而,为了准确地辅助,人们认为机器人必须能够识别人类的动作,并且必须能够恰当地辅助。因此,保存和再现人体运动的系统“运动数据库”是必要的。在这里,为了准确地辅助,包含力信息的运动被保存到数据库中。本研究采用双侧控制的方法提取人体运动的轨迹信息和力信息,并对其进行建模。为了从数据库中重现适当的运动,需要一个搜索系统。为了适应动力辅助,搜索系统应该是实时的,能够随时搜索。因此,本研究提出了一种实时运动搜索方法。由于人体运动具有马尔可夫性,搜索方法基于隐马尔可夫模型。该方法可以在人体运动时实时搜索人体运动。通过运动搜索实验验证了该方法的可行性。
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