Score Fusion of SVD and DCT-RLDA for Face Recognition

Messaoud Bengherabi, L. Mezai, F. Harizi, A. Guessoum, M. Cheriet
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引用次数: 7

Abstract

Although information fusion in unimodal or multimodal biometric systems can be performed at various levels, integration of the matching score level is the most common approach. Starting from the fact; that the fusion will be efficient if and only if the fused approaches are complementary not fully competitive. We propose in this paper the fusion of two projection based face recognition algorithms: singular value decomposition (SVD) using the left and right singular vectors of the face image as a face feature stored in a matrix and regularized Linear Discriminant Analysis in DCT domain (DCT-RLDA) which is known by its computational efficiency in addition to discrimination power. Experiments conducted on the ORL database indicate that the application of the Min-Max, Z-score score normalization schemes followed by a simple fusion strategies (simple sum, weighted sum, append) confirm the benefits of the proposed approach in terms of identification rate and processing time.
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基于SVD和DCT-RLDA的评分融合人脸识别
虽然单模态或多模态生物识别系统的信息融合可以在不同的层次上进行,但最常见的方法是匹配分数水平的整合。从事实出发;当且仅当融合的方法是互补的而不是完全竞争的,融合将是有效的。本文提出了两种基于投影的人脸识别算法的融合:将人脸图像的左右奇异向量作为人脸特征存储在矩阵中的奇异值分解算法(SVD)和DCT域的正则化线性判别分析算法(DCT- rlda),该算法以其计算效率和判别能力而著名。在ORL数据库上进行的实验表明,将Min-Max、Z-score评分归一化方案与简单的融合策略(简单和、加权和、附加)相结合,在识别率和处理时间上都取得了良好的效果。
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