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Research on gait-based human identification

机译:基于步态的人类识别研究

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Gait recognition refers to automatic identification of individual based on his/her style of walking. This paper proposes a gait recognition method based on Continuous Hidden Markov Model with Mixture of Gaussians (G-CHMM). First, a Gaussian mix model is initialized for training image sequence with K-means algorithm, and then training the HMM parameters using Baum-Welch algorithm. These gait feature sequences can be trained and obtains a Continuous HMM for every person; therefore, every person's gait sequence can be represented by the 7 key frames and HMM. The experiments, utilizing CASIA gait databases, present a comparatively correction identification ratio and a comparatively robustness when the bodily angle varying.
机译:步态识别是指根据个人的行走方式自动识别。提出了一种基于连续高斯混合隐马尔可夫模型的步态识别方法。首先,初始化高斯混合模型以使用K-means算法训练图像序列,然后使用Baum-Welch算法训练HMM参数。可以训练这些步态特征序列,并为每个人获得连续的HMM。因此,每个人的步态顺序可以由7个关键帧和HMM表示。利用CASIA步态数据库进行的实验表明,当身体角度发生变化时,校正识别率和鲁棒性都相对较高。

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