基于随机上下文无关语法的任务导向动作贝叶斯分类

Masanobu Yamamoto, Humikazu Mitomi, F. Fujiwara, Taisuke Sato
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引用次数: 42

摘要

本文提出了一种基于随机上下文无关语法(SCFG)的面向任务的动作识别新方法。我们的注意力集中在日本茶道中的动作上,这些动作可以用上下文无关的语法来描述。我们的目的是认识到茶服务的作用。现有的SCFG方法包括符号字符串的生成、解析和识别。符号字符串通常包含不确定性。因此,解析过程需要在输入过程中恢复错误。本文提出了一种尽可能无差错的分割方法,将一个动作分割成一系列更精细的动作。该方法基于人体运动的加速度,可以产生与终端符号相对应的精细动作,误差很小。在将精细操作序列转换为一组符号字符串之后,基于scfg的解析会为该集合留下少量待派生的符号字符串。在剩余的字符串中,贝叶斯分类器以最大后验概率回答动作名称。给定一个SCFG规则的多个概率,一个SCFG可以识别多个动作
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian classification of task-oriented actions based on stochastic context-free grammar
This paper proposes a new approach for recognition of task-oriented actions based on stochastic context-free grammar (SCFG). Our attention puts on actions in the Japanese tea ceremony, where the action can be described by context-free grammar. Our aim is to recognize the action in the tea services. Existing SCFG approach consists of generating symbolic string, parsing it and recognition. The symbolic string often includes uncertainty. Therefore, the parsing process needs to recover the errors at the entry process. This paper proposes a segmentation method errorless as much as possible to segment an action into a string of finer actions. This method, based on an acceleration of the body motion, can produce the fine action corresponding to a terminal symbol with little error. After translating the sequence of fine actions into a set of symbolic strings, SCFG-based parsing of this set leaves small number of ones to be derived. Among the remaining strings, Bayesian classifier answers the action name with a maximum posterior probability. Giving one SCFG rule the multiple probabilities, one SCFG can recognize multiple actions
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