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Joint Unsupervised Face Alignment and Behaviour Analysis

机译:联合无监督人脸对齐和行为分析

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The predominant strategy for facial expressions analysis and temporal analysis of facial events is the following: a generic facial landmarks tracker, usually trained on thousands of carefully annotated examples, is applied to track the landmark points, and then analysis is performed using mostly the shape and more rarely the facial texture. This paper challenges the above framework by showing that it is feasible to perform joint landmarks localization (i.e. spatial alignment) and temporal analysis of behavioural sequence with the use of a simple face detector and a simple shape model. To do so, we propose a new component analysis technique, which we call Autoregressive Component Analysis (ARCA), and we show how the parameters of a motion model can be jointly retrieved. The method does not require the use of any sophisticated landmark tracking methodology and simply employs pixel intensities for the texture representation.
机译:面部事件的面部表情分析和时间分析的主要策略如下:通常使用数千个经过仔细注释的示例训练的通用面部地标跟踪器来跟踪地标点,然后主要使用形状和形状进行分析。很少有面部纹理。本文通过展示使用简单的面部检测器和简单的形状模型执行联合界标定位(即空间对齐)和行为序列的时间分析是可行的,从而对上述框架提出了挑战。为此,我们提出了一种新的成分分析技术,称为自回归成分分析(ARCA),并展示了如何联合检索运动模型的参数。该方法不需要使用任何复杂的界标跟踪方法,而只是采用像素强度进行纹理表示。

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