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Action Recognition Using Motion Primitives and Probabilistic Edit Distance

机译:使用运动原语和概率编辑距离的动作识别

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摘要

In this paper we describe a recognition approach based on the notion of primitives. As opposed to recognizing actions based on temporal trajectories or temporal volumes, primitive-based recognition is based on representing a temporal sequence containing an action by only a few characteristic time instances. The human whereabouts at these instances are extracted by double difference images and represented by four features. In each frame the primitive, if any, that best explains the observed data is identified. This leads to a discrete recognition problem since a video sequence will be converted into a string containing a sequence of symbols, each representing a primitives. After pruning the string a probabilistic Edit Distance classifier is applied to identify which action best describes the pruned string. The approach is evaluated on five one-arm gestures and the recognition rate is 91.3%. This is concluded to be a promising result but also leaves room for further improvements.
机译:在本文中,我们描述了一种基于基元概念的识别方法。与基于时间轨迹或时间量来识别动作相反,基于基元的识别是基于表示仅包含几个特征时间实例的包含动作的时间序列。在这些情况下,人的下落通过双差图像提取,并由四个特征表示。在每个帧中,如果有的话,可以最好地解释所观察到的数据的原语被识别。这导致离散的识别问题,因为视频序列将被转换为包含符号序列的字符串,每个符号序列代表一个图元。修剪字符串后,将使用概率“编辑距离”分类器来确定哪个操作最能描述修剪后的字符串。该方法在五个单臂手势上进行了评估,识别率为91.3%。结论是一个令人鼓舞的结果,但也留有进一步改进的余地。

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