从整个身体运动序列的关键手势鲁棒定位

Hee-Deok Yang, A-Yeon Park, Seong-Whan Lee
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引用次数: 19

摘要

视频中的鲁棒手势识别需要从整个身体手势序列中分割出有意义的手势。这是一个具有挑战性的问题,因为描述和建模无意义的手势模式并不简单。提出了一种全身按键手势同步识别的新方法。人体主体首先通过一组特征来描述,这些特征编码了3D中十二个身体部位之间的角度关系。然后将特征向量映射到手势hmm的码字。为了准确识别关键手势,提出了一种复杂的垃圾手势模型设计方法;一种基于数据相关统计和相对熵合并相似状态的模型简化。该模型提供了一种有效的机制来限定或取消手势动作。该方法已用20人的样本和80个合成数据进行了测试。该方法在识别任务中的可靠性为94.8%,对孤立手势的识别率为97.4%
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Robust Spotting of Key Gestures from Whole Body Motion Sequence
Robust gesture recognition in video requires segmentation of the meaningful gestures from a whole body gesture sequence. This is a challenging problem because it is not straightforward to describe and model meaningless gesture patterns. This paper presents a new method for simultaneous spotting and recognition of whole body key gestures. A human subject is first described by a set of features encoding the angular relations between a dozen body parts in 3D. A feature vector is then mapped to a codeword of gesture HMMs. In order to spot key gestures accurately, a sophisticated method of designing a garbage gesture model is proposed; a model reduction which merges similar states based on data-dependent statistics and relative entropy. This model provides an effective mechanism for qualifying or disqualifying gestural motions. The proposed method has been tested with 20 persons' samples and 80 synthetic data. The proposed method achieved a reliability rate of 94.8% in spotting task and a recognition rate of 97.4% from an isolated gesture
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