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FACIAL MOVEMENT INFORMATION EXTRACTING METHOD BASED ON TENDENCY CONSISTENT-GAUSSIAN PROCESSING LATENT VARIABLE MODEL

机译:基于张力一致高斯过程潜在变量模型的运动信息提取方法

摘要

A facial movement information extracting method based on a tendency consistent-Gaussian processing latent variable model. The tendency consistent-Gaussian processing latent variable model is described as follows: (1) forming a Gaussian processing latent variable model objective function based on Markov assumptions and for solving the low-dimensional hidden variable sequence; and (2) adding a tendency-consistent limiting condition to form a tendency consistent-Gaussian processing latent variable mode objective function. The facial movement information extracting method based on a tendency consistent-Gaussian processing latent variable model is described as follows: (1) obtaining, by using a principal component analysis (PCA), a facial sequence hidden variable space initial value for the tendency consistent-Gaussian processing latent variable mode objective function; and (2) solving the hidden variable by using the scale conjugate gradient method, to obtain a low-dimensional hidden variable sequence corresponding to the facial movement sequence. Through the method, while the movement information independent of the identity information is extracted, the difference in the range of hidden space sequence variation caused by different-range facial movement is reserved.
机译:基于趋势一致性高斯处理潜变量模型的面部运动信息提取方法。趋势一致性高斯处理潜变量模型描述如下:(1)基于马尔可夫假设形成高斯处理潜变量模型目标函数,并求解低维隐变量序列。 (2)增加趋势一致极限条件,形成趋势一致高斯处理潜变量模式目标函数。基于趋势一致性-高斯处理潜变量模型的面部运动信息提取方法描述如下:(1)通过使用主成分分析(PCA)获得趋势一致性的面部序列隐藏变量空间初始值-高斯处理潜变量模式目标函数; (2)通过比例共轭梯度法求解隐变量,得到与面部运动序列相对应的低维隐变量序列。通过该方法,在提取与身份信息无关的运动信息的同时,保留了由不同范围的面部运动引起的隐藏空间序列变化的范围的差异。

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