Joint and implicit registration for face recognition

Peng Li, S. Prince
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引用次数: 13

Abstract

Contemporary face recognition algorithms rely on precise localization of keypoints (corner of eye, nose etc.). Unfortunately, finding keypoints reliably and accurately remains a hard problem. In this paper we pose two questions. First, is it possible to exploit the gallery image in order to find keypoints in the probe image? For instance, consider finding the left eye in the probe image. Rather than using a generic eye model, we use a model that is informed by the appearance of the eye in the gallery image. To this end we develop a probabilistic model which combines recognition and keypoint localization. Second, is it necessary to localize keypoints? Alternatively we can consider keypoint position as a hidden variable which we marginalize over in a Bayesian manner. We demonstrate that both of these innovations improve performance relative to conventional methods in both frontal and cross-pose face recognition.
人脸识别的联合和隐式配准
当代人脸识别算法依赖于关键点(眼角、鼻子等)的精确定位。不幸的是,可靠而准确地找到关键点仍然是一个难题。在本文中,我们提出两个问题。首先,是否有可能利用图库图像来找到探测图像中的关键点?例如,考虑在探针图像中找到左眼。而不是使用一般的眼睛模型,我们使用的模型是由画廊图像中眼睛的外观所提供的信息。为此,我们开发了一种结合识别和关键点定位的概率模型。第二,是否有必要对关键点进行本地化?或者,我们可以将关键点位置视为一个隐变量,我们用贝叶斯方法将其边缘化。我们证明了这两种创新在正面和交叉姿态面部识别方面都比传统方法提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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