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Local Gabor Binary Pattern Whitened PCA: A Novel Approach for Face Recognition from Single Image Per Person

机译:局部Gabor二元模式变白的PCA:一种基于每人单个图像的人脸识别新方法

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One major challenge for face recognition techniques is the difficulty of collecting image samples. More samples usually mean better results but also more effort, time, and thus money. Unfortunately, many current face recognition techniques rely heavily on the large size and representativeness of the training sets, and most methods suffer degraded performance or fail to work if there is only one training sample per person available. This so-called "Single Sample per Person" (SSP) situation is common in face recognition. To resolve this problem, we propose a novel approach based on a combination of Gabor Filter, Local Binary Pattern and Whitened PCA (LGBPWP). The new LGBPWP method has been successfully implemented and evaluated through experiments on 3000+ FERET frontal face images of 1196 subjects. The results show the advantages of our method - it has achieved the best results on the FERET database. The established recognition rates are 98.1%, 98.9%, 83.8% and 81.6% on the fb, fc, dup I, and dup II probes, respectively, using only one training sample per person.
机译:面部识别技术的一个主要挑战是收集图像样本的困难。通常,更多的样本意味着更好的结果,但也意味着更多的努力,时间和金钱。不幸的是,当前许多人脸识别技术严重依赖于训练集的大尺寸和代表性,并且如果每个人只有一个训练样本,大多数方法会降低性能或无法工作。这种所谓的“每人单个样本”(SSP)情况在面部识别中很常见。为了解决这个问题,我们提出了一种基于Gabor滤波器,局部二进制模式和Whiteed PCA(LGBPWP)组合的新颖方法。通过对1196位受试者的3000多张FERET额叶正面图像进行的实验,新的LGBPWP方法已成功实施和评估。结果显示了我们方法的优点-它在FERET数据库上取得了最佳结果。 fb,fc,dup I和dup II探针的建立识别率分别为98.1%,98.9%,83.8%和81.6%,每人仅使用一个训练样本。

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