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Hand gesture recognition using a real-time tracking method and hidden Markov models

机译:使用实时跟踪方法和隐马尔可夫模型进行手势识别

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摘要

In this paper, we introduce a hand gesture recognition system to recognize continuous gesture before stationary background. The system consists of four modules: a real time hand tracking and extraction, feature extraction, hidden Markov model (HMM) training, and gesture recognition. First, we apply a real-time hand tracking and extraction algorithm to trace the moving hand and extract the hand region, then we use the Fourier descriptor (FD) to characterize spatial features and the motion analysis to characterize the temporal features. We combine the spatial and temporal features of the input image sequence as our feature vector. After having extracted the feature vectors, we apply HMMs to recognize the input gesture. The gesture to be recognized is separately scored against different HMMs. The model with the highest score indicates the corresponding gesture. In the experiments, we have tested our system to recognize 20 different gestures, and the recognizing rate is above 90%.
机译:在本文中,我们介绍了一种手势识别系统,用于在静止背景之前识别连续手势。该系统由四个模块组成:实时手部跟踪和提取,特征提取,隐马尔可夫模型(HMM)训练以及手势识别。首先,我们应用实时手部跟踪和提取算法来跟踪运动的手并提取手部区域,然后使用傅立叶描述符(FD)表征空间特征,并使用运动分析来表征时间特征。我们将输入图像序列的空间和时间特征组合为特征向量。提取特征向量后,我们应用HMM识别输入手势。待识别的手势是针对不同的HMM分别评分的。得分最高的模型表示相应的手势。在实验中,我们对系统进行了测试,可以识别20种不同的手势,识别率超过90%。

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