通过最小化最接近的分类距离实现人脸对齐

H. K. Ekenel, R. Stiefelhagen
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引用次数: 3

摘要

在本文中,我们提出了一种人脸配准方法,该方法通过在分类步骤中最小化最近距离来完成对齐。该方法消除了传统人脸识别系统中存在的特征定位步骤,并将对齐作为分类过程中的优化过程。也就是说,该方法不是单独执行人脸特征定位步骤,根据某种类型的特征匹配分数来定位人脸特征,而是通过直接优化分类分数来实现对齐。此外,还可以将特征检测器集成到系统中。在这种情况下,特征检测器的输出被用作优化过程的初始点。大量的实验结果表明,该方法具有很高的正确识别率,特别是在部分人脸遮挡的情况下,无法精确检测人脸特征位置。研究还发现,在使用面部特征检测器的情况下,该方法可以容忍高达18%的眼间距离的定位误差。
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Face alignment by minimizing the closest classification distance
In this paper, we present a face registration approach, in which alignment is done by minimizing the closest distance at the classification step. This method eliminates the need of a feature localization step that exists in traditional face recognition systems and formulates alignment as an optimization process during classification. In other words, instead of performing a separate facial feature localization step and localizing facial features according to some type of feature matching score, in the proposed method, alignment is done by directly optimizing the classification score. Moreover, a feature detector can still be integrated to the system. In this case, the output of the feature detector is used as the initial point of the optimization process. Results of extensive experiments have shown that the proposed approach leads very high correct recognition rates, especially in the case of partial face occlusion, where it is not possible to precisely detect the facial feature locations. It has been also found that, in the case of using a facial feature detector, the approach can tolerate localization errors of up to 18% of the interocular distance.
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