一种基于量化系数的JPEG压缩域低复杂度高效人脸识别方法

Alireza Sepas-Moghaddam, M. Moin, H. Rashidy Kanan
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引用次数: 6

摘要

计算和空间复杂性以及存储空间是人脸识别系统设计中最重要的问题之一。人脸识别系统中存储图像的常用方法是使用JPEG标准对图像进行压缩。通常,对压缩后的图像进行完全解压缩进行识别,使识别过程在解压缩域内完成。此过程会导致较高的计算开销。本文研究了在JPEG压缩域中使用量化系数的人脸识别过程,以减少解压缩过程带来的计算开销。此外,为了降低匹配阶段的计算量和空间复杂度,采用量化系数的方差分析和主成分分析方法对图像子空间进行降维。本研究在FERET数据库的4个数据集上进行了实验。实验结果表明,该方法在识别率、存储空间、计算复杂度和空间复杂度等方面均优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A low complexity and efficient face recognition approach in JPEG compressed domain using quantized coefficients
Computational and space complexities and storage space are amongst the most important issues in designing face recognition systems. A common method for storing images in face recognition systems is compressing images using JPEG standard. Usually, the compressed images are fully decompressed for recognition, so that the recognition process is done in decompressed domain. This procedure causes a high computational overhead. In this paper, we have studied the face recognition procedure using quantized coefficients in JPEG compressed domain for reducing the computational overhead caused by decompression process. In addition, in order to reduce the matching stage computational and space complexities, variance analysis and principle components analysis methods on quantized coefficients have been applied to reduce the dimension of images subspace. The experiments in this research have been done on four datasets of FERET database. Experimental results show that the proposed method outperforms existing methods in recognition rates, storage space, computational and space complexity aspects.
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