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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Simultaneous gesture segmentation and recognition based on forward spotting accumulative HMMs
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Simultaneous gesture segmentation and recognition based on forward spotting accumulative HMMs

机译:基于前向累积HMM的同时手势分割与识别

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摘要

Existing gesture segmentations use the backward spotting scheme that first detects the end point, then traces back to the start point and sends the extracted gesture segment to the hidden Markov model (HMM) for gesture recognition. This makes an inevitable time delay between the gesture segmentation and recognition and is not appropriate for continuous gesture recognition. To solve this problem, we propose a forward spotting scheme that executes gesture segmentation and recognition simultaneously. The start and end points of gestures are determined by zero crossing from negative to positive (or from positive to negative) of a competitive differential observation probability that is defined by the difference of observation probability between the maximal gesture and the non-gesture. We also propose the sliding window and accumulative HMMs. The former is used to alleviate the effect of incomplete feature extraction on the observation probability and the latter improves the gesture recognition rate greatly by accepting all accumulated gesture segments between the start and end points and deciding the gesture type by a majority vote of all intermediate recognition results. We use the predetermined association mapping to determine the 3D articulation data, which reduces the feature extraction time greatly. We apply the proposed simultaneous gesture segmentation and recognition method to recognize the upper-body gestures for controlling the curtains and lights in a smart home environment. Experimental results show that the proposed method has a good recognition rate of 95.42% for continuously changing gestures. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:现有的手势细分使用向后点识别方案,该方案先检测到终点,然后再追溯到起点,然后将提取的手势片段发送到隐藏的马尔可夫模型(HMM)以进行手势识别。这在手势分割和识别之间造成了不可避免的时间延迟,并且不适用于连续手势识别。为了解决这个问题,我们提出了一种同时执行手势分割和识别的前向定位方案。手势的起点和终点由竞争差异观察概率的负值到正值(或从正值到负值)的零交叉确定,该差异由最大手势和非手势之间的观察概率之差定义。我们还提出了滑动窗口和累积HMM。前者用于减轻不完整特征提取对观察概率的影响,后者通过接受起点和终点之间的所有累积手势段并通过所有中间识别的多数表决来决定手势类型,从而大大提高了手势识别率结果。我们使用预定的关联映射来确定3D清晰度数据,这大大减少了特征提取时间。我们将提出的同时手势分割和识别方法应用于识别智能家居环境中用于控制窗帘和灯光的上身手势。实验结果表明,该方法对于连续变化手势具有良好的识别率,为95.42%。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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