基于光照不变鲁棒快速人脸检测、特征提取的人脸识别系统

Priyanka Goel, S. Agarwal
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引用次数: 6

摘要

提出了一种快速有效的非均匀光照下人脸识别方法。鲁棒哈尔分类器技术用于从图像中检测人脸。由于光照变化存在于低频DCT系数中,因此在保留重要面部特征的同时,通过重新缩放适当数量的低频DCT系数来去除被检测面部的光照变化。此外,由于重要的面部特征集中在少量的DCT系数中,因此通过丢弃高频系数来生成人脸特征向量。采用K-means聚类来降低搜索空间复杂度。利用欧几里得距离将测试图像的特征向量与最接近的匹配簇中的图像特征向量进行比较,从而实现人脸识别。在耶鲁数据库、Caltech数据库、IMM数据库和扩展耶鲁人脸数据库B上的实验结果表明,该方法将人脸识别率提高到100%,显著降低了搜索空间复杂度,计算成本低。通过对不同阈值的误接受率(FAR)和误拒绝率(FRR)进行标绘,得到等错误率(EER)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Illumination Invariant Robust and Fast Face Detection, Feature Extraction Based Face Recognition System
This paper proposes a fast and efficient approach for face recognition under non uniform illumination variations. Robust Haar classifiers technique is used for face detection from an image. Since illumination variations lie in low frequency DCT coefficients, illumination variations is removed from detected face by rescaling down an appropriate number of low frequency DCT coefficients while still preserving important facial features. Further, since, important facial features are concentrated in small number of DCT coefficients, face feature vector is generated by discarding high frequency coefficients. K-means clustering is employed to reduce search space complexity. Face recognition is performed by comparing feature vector of test image with feature vector of images in the closest matching cluster using Euclidean distance. Experimental results on Yale database, Caltech database, IMM database and Extended Yale face database B show that the proposed approach improves face recognition rate upto 100% along with significantly reduced search space complexity and low computational cost. Equal error rate (EER) is acquired by plotting false acceptance rate (FAR) and false reject rate (FRR) against different threshold values.
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