基于扩展局域保持投影的人脸和面部表情识别

Deshna Jain, G. Shikkenawis, S. Mitra, S. K. Parulkar
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引用次数: 3

摘要

一个人在不同的表情、方向、光照条件下拍摄的面部图像,即使在任何数学变换下,也应该是彼此接近的。与人类相比,这些高维人脸图像很难被机器识别为同一个人的面孔。因此,许多现有的人脸识别系统在执行识别任务之前明确地降低了维数。然而,不能保证一个人的不同面孔在低维空间中仍然是接近的。扩展局域保持投影(ELPP)等降维技术不仅可以显著降低输入数据的维数,而且可以利用投影空间中的邻域信息保持局域性。本文研究了一种人脸识别系统,该系统利用ELPP对人脸图像进行降维,从而将ELPP系数作为特征传递给分类器进行识别。具体来说,使用了朴素贝叶斯分类器和支持向量机两种分类器。不同数据集的人脸识别结果令人印象深刻,同时面部表情的识别结果也令人鼓舞。采用监督版本的ELPP (ESLPP)也进行了实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face and facial expression recognition using Extended Locality Preserving Projection
Face images of a person taken in varying expressions, orientations, lighting conditions are expected to be close to each other even under any mathematical transformation. These high dimensional face images are difficult to be recognized as faces of same person by machines in contrast to the humans. Many of the existing face recognition systems thus explicitly reduce the dimensions before performing recognition task. However, it is not guaranteed that varying faces of a single person could still be close in the lower dimensional space. Dimensionality reduction technique such as Extended Locality Preserving Projection (ELPP) not only reduces the dimension of the input data remarkably but also preserves the locality using neighbourhood information in the projected space. This paper deals with a face recognition system where ELPP is used to reduce the dimension of face images and hence uses ELPP coefficients as features to the classifier for recognition. In specific, two classifiers namely Naive Bayes classifier and Support Vector Machine are used. Results of face recognition of different data sets are highly impressive and at the same time results of facial expressions are encouraging. Experiments have also been carried out by taking a supervised version of ELPP (ESLPP).
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