基于增强图像模型的大光照和表情变化下眼睛精确定位

F. Song, Xiaoyang Tan, Songcan Chen
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摘要

作为人脸归一化的第一步,准确的眼睛定位技术对人脸识别系统的性能起着至关重要的作用。解决这个问题的最经典方法之一是图形模型,其中外观模型和形状约束一起优化。然而,在极端光照变化和表情变化较大的情况下,图像模型中使用的简单高斯外观模型和基于定位的形状约束无法处理给定人脸图像中出现的复杂外观和结构变化。本文结合光照强度预处理、鲁棒图像描述符、概率支持向量机和一种对尺度、旋转等变换不变性的改进结构模型,对图像模型进行增强。在CAS-PEAL数据集上的实验结果表明,尽管人脸图像的光照和表情变化较大,该模型仍能准确地定位眼睛。
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Accurate Eye Localization under Large Illumination and Expression Variations with Enhanced Pictorial Model
As the first step in a face normalization procedure, accurate eye localization technique has the fundamental importance for the performance of face recognition systems. One of the most classical methods to address this is the pictorial model where the appearance model and shape constraints are optimized together. However, under extreme illumination changes and large expression variations, the simple Gaussian appearance model and the localization-based shape constraints used in the pictorial model are not capable to handle the complex appearance and structural changes appeared in the given face image. In this paper, we enhanced the pictorial model by combining the strength of illumination preprocessing, robust image descriptors, probabilistic SVM and an improved structural model which are invariant to scale, rotation and other transforms. Experimental results on CAS-PEAL dataset demonstrated that the proposed model can accurately localize eyes in spite of large illumination and expression variations in face images.
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