人脸识别中的像素聚类

Tiago Buarque Assunção de Carvalho, M. Sibaldo, Ing Ren Tsang, George D. C. Cavalcanti, I. Tsang, Jan Sijbers
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引用次数: 6

摘要

这项工作提出了一个称为像素聚类的无监督特征提取的理论框架。其主要思想是基于像素的聚类,以缓解多重共线性问题,并为每个相似像素的聚类提取一个新的特征。这允许通过设置三个部分来定义特征提取技术:(1)定义训练集中的像素向量,每个像素向量代表每个训练图像上的一个像素,(2)像素向量的聚类算法,(3)最后将像素线性组合成一个聚类,以便在每个聚类中创建单个特征。该框架还可以创建更简单、计算成本更低、更通用的已知特征提取方法(如wavetfaces)的新实现。在三个人脸数据集上实现并测试了两种提取方法。测试结果与传统的特征脸和其他最先进的人脸识别特征提取方法进行了比较。如果使用较少的类来训练投影,该方法的人脸识别率比特征脸提高38%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pixel Clustering for Face Recognition
This work proposes a theoretical framework for an unsupervised feature extraction called Pixel Clustering. The main idea is based on the clustering of the pixels in order to mitigate the multicollinearity issue and a new feature is extracted for each cluster of similar pixels. This allows to define feature extraction techniques by setting just three parts: (1) defining pixel vectors in the training set, each pixel vector is a representative for a pixel on every training image, (2) a clustering algorithm for the pixels vectors, (3) finally it is performed a linear combination of the pixel into a cluster, in order to create a single feature per cluster. The framework also makes it possible to create simpler, computationally cheaper and more general new implementations of well known feature extraction methods such as Waveletfaces. Two extraction methods are implemented and tested in three face datasets. Test results are compared to the traditional Eigenfaces and others state-of-art feature extraction methods for face recognition. The proposed method achieves up to 38% higher face recognition rate than Eigenfaces, if few classes are used for training the projections.
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