Applying Multiresolution Analysis to Vector Quantization Features for Face Recognition

Ahmed Aldhahab, Taif Alobaidi, A. Q. Althahab, W. Mikhael
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引用次数: 6

Abstract

In this paper, an approach of Facial Parts Detection (FPD) followed by the Discrete Wavelet Transform (DWT) in conjunction with Vector Quantization (VQ) algorithm for Facial Recognition (FR) are proposed. The FR system contains two modes: Training, and Classification. The proposed FR modes contain Preprocessing step followed by the Feature Extraction. The Classification mode yields the identification. The FPD detects nose, both eyes, and mouth for each pose in the Preprocessing step. Then, DWT is employed for each part that is detected for feature selection and data reduction. Thereafter, for further compaction and discrimination, the VQ, with the Kekre Fast Codebook Generation (KFCG) initialization method, is employed to form the final model that contains four feature groups per person. The DWT and VQ are utilized to reduce final feature dimensions without affecting discrimination. The recognition accuracy is calculated using the Euclidean distance. The four databases that are utilized to test the performance of the proposed FR system are: Georgia Tech, YALE, FEI, and FERET. The poses in these databases have various illumination conditions, face rotation, facial expressions, etc. The results, from which samples are presented here, of the FR system and other techniques are obtained and then examined using the Cross Validation based on K-fold method. The proposed FR is shown to improve the recognition accuracies while significantly reducing the storage requirements with comparable computational complexity.
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将多分辨率分析应用于人脸识别的矢量量化特征
本文提出了一种面部部件检测(FPD)方法,然后采用离散小波变换(DWT)和矢量量化(VQ)算法进行面部识别(FR)。人脸识别系统包含两种模式:训练和分类。拟议的人脸识别模式包括预处理步骤和特征提取。分类模式产生识别结果。在预处理步骤中,FPD 会检测每个姿势的鼻子、双眼和嘴巴。然后,对检测到的每个部分使用 DWT 进行特征选择和数据缩减。之后,为了进一步压缩和辨别,采用 VQ 和 Kekre 快速编码本生成(KFCG)初始化方法,形成最终模型,每个人包含四个特征组。利用 DWT 和 VQ 可以在不影响识别的情况下减少最终特征维数。识别准确率使用欧氏距离计算。用于测试拟议 FR 系统性能的四个数据库是乔治亚理工学院、耶鲁大学、FEI 和 FERET。这些数据库中的姿势具有不同的光照条件、面部旋转和面部表情等。我们从这些样本中获得了 FR 系统和其他技术的结果,然后使用基于 K-fold 方法的交叉验证对这些结果进行了检验。结果表明,拟议的 FR 系统提高了识别准确率,同时在计算复杂度相当的情况下显著降低了存储要求。
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