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Gait Recognition based on Stochastic Switched Auto-regressive Model

机译:基于随机交换自动回归模型的步态识别

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A robust and compact gait model is desirable in many security applications because gait recognition is a promising non-intrusive biometric method. Only a few gait recognition systems adopted kinematical cues exclusively, but the dynamics model of parametric human body, including mass, length, inertia are seldom considered thoroughly. Furthermore, almost all these cues are velocity-dependent. The proposed model has a unique and flexible structure to deal with temporal features of gait like the timing and proportion of different phases in a gait cycle. It has a circular structure and 2 classes of states. In order to fit the velocity-invariant features of gait, a special learning algorithm is proposed under the model's 2 kinds of structures. A 2-link virtual passive walking model plays an important role both in the configuration of the parameter matrix and the selection of the parameters' initial values. By evaluation the recognition rates of different models, the velocity-robust characteristics of the new model and its low computational load compared with conventional HMM are verified.
机译:在许多安全应用程序中,鲁棒和紧凑的步态模型是可取的,因为步态识别是一个有前途的非侵入式生物测量方法。只有几个步态识别系统专门采用了运动学提示,而是参数化人体的动力学模型,包括质量,长度,惯性很少被彻底考虑。此外,几乎所有这些提示都是速度相关的。该拟议的模型具有独特且灵活的结构,可以处理步态的时间特征,如步态周期中不同阶段的时序和比例。它具有圆形结构和2级状态。为了符合步态的速度不变特征,在模型的2种结构下提出了一种特殊的学习算法。在参数矩阵的配置和参数的初始值的配置中,两个链路虚拟被动步行模型在参数矩阵的配置中起重要作用。通过评估不同模型的识别率,验证了与传统HMM相比的新模型的速度鲁棒特性及其低计算负荷。

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