从随机语法到贝叶斯网络:复杂活动的概率解析

Nam N. Vo, A. Bobick
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引用次数: 81

摘要

我们提出了一种概率方法来解析时间序列,例如定义为子活动/动作组成的复杂活动。高级活动的时间结构由字符串长度有限的随机上下文无关语法表示。给定语法,将生成一个贝叶斯网络,我们称之为顺序间隔网络(SIN),其中变量节点对应于组件动作的开始和结束时间。该网络集成了有关每个基本动作持续时间、每个基本动作的视觉检测结果以及活动的时间结构的信息。在活动期间的任何时刻,消息传递用于执行精确的推理,产生每个不同活动/动作的开始和结束时间的后验概率。我们提供了将该框架应用于视觉任务的演示,例如动作预测,高级活动分类或测试序列的时间分割,该方法也适用于需要持续预测人类动作的人机交互领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Stochastic Grammar to Bayes Network: Probabilistic Parsing of Complex Activity
We propose a probabilistic method for parsing a temporal sequence such as a complex activity defined as composition of sub-activities/actions. The temporal structure of the high-level activity is represented by a string-length limited stochastic context-free grammar. Given the grammar, a Bayes network, which we term Sequential Interval Network (SIN), is generated where the variable nodes correspond to the start and end times of component actions. The network integrates information about the duration of each primitive action, visual detection results for each primitive action, and the activity's temporal structure. At any moment in time during the activity, message passing is used to perform exact inference yielding the posterior probabilities of the start and end times for each different activity/action. We provide demonstrations of this framework being applied to vision tasks such as action prediction, classification of the high-level activities or temporal segmentation of a test sequence, the method is also applicable in Human Robot Interaction domain where continual prediction of human action is needed.
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