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Recognizing Surgically Altered Face Images and 3D Facial Expression Recognition.

机译:识别手术改变的面部图像和3D面部表情识别。

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Altering Facial appearances using surgical procedures are common now days. But it raised challenges for face recognition algorithms. Plastic surgery introduces non linear variations. Because of these variations it is difficult to be modeled by the existing face recognition system. Here presents a multi objective evolutionary granular algorithm. It operates on several granules extracted from a face images at multiple level of granularity. This granular information is unified in an evolutionary manner using multi objective genetic approach. Then identify the facial expression from the face images. For that 3D facial shapes are considering here. A novel automatic feature selection method is proposed based on maximizing the average relative entropy of marginalized class-conditional feature distributions and apply it to a complete pool of candidate features composed of normalized Euclidian distances between 83 facial feature points in the 3D space. A regularized multi-class AdaBoost classification algorithm is used here to get the highest average recognition rate.
机译:使用外科手术改变面部外观是现在的日子。但它提出了面部识别算法的挑战。整形手术引入了非线性变化。由于这些变型,难以通过现有的人脸识别系统进行建模。这里提出了一种多目标进化粒度算法。它在多个粒度下从面部图像中提取的几颗颗粒上操作。使用多目标遗传方法,以进化方式统一这种粒度信息。然后识别面部图像的面部表情。对于那个3D面部形状正在考虑这里。提出了一种新的自动特征选择方法,基于最大化边缘化类条件分布的平均相对熵,并将其应用于由3D空间中的83个面部特征点之间的标准化欧几里德距离组成的完整候选特征池。这里使用了正则化的多级Adaboost分类算法来获得最高的平均识别率。

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