基于多核准则的低分辨率人脸图像识别

Chuan-Xian Ren, D. Dai, Hong Yan
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引用次数: 3

摘要

实际的人脸识别系统有时会遇到低分辨率(LR)图像。现有的特征提取算法大多是为了在线性嵌入空间中保持输入空间对象之间的关系结构。然而,人们一致认为,通过采用多个描述符来更精确地描述数据以提高性能,可以很好地解决这种复杂的视觉学习任务。本文针对传统方法由于缺乏有效的相似性度量而难以实现LR和高分辨率图像匹配的问题,提出了一种无需超分辨率预处理的LR人脸识别多核准则(MKC)。将RsL2、LBP、Gradientface和IMED等不同的图像描述符作为多核生成器,利用高斯函数作为距离诱导核。MKC通过最小化多个核捕获的相似性之间的不一致性来解决这个问题,并且可以通过约束特征值分解来交替最小化非线性目标函数。在基准数据库上的实验表明,MKC方法确实提高了识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low resolution facial image recognition via multiple kernel criterion
Practical face recognition systems are sometimes confronted with low-resolution (LR) images. Most existing feature extraction algorithms aim to preserve relational structure among objects of the input space in a linear embedding space. However, it has been a consensus that such complex visual learning tasks will be well be solved by adopting multiple descriptors to more precisely characterize the data for improving performance. In this paper, we addresses the problem of matching LR and high-resolution images that are difficult for conventional methods in practice due to the lack of an efficient similarity measure, and a multiple kernel criterion (MKC) is proposed for LR face recognition without any super-resolution (SR) preprocessing. Different image descriptors including RsL2, LBP, Gradientface and IMED are considered as the multiple kernel generators and the Gaussian function is exploited as the distance induced kernel. MKC solves this problem by minimizing the inconsistency between the similarities captured by the multiple kernels, and the nonlinear objective function can be alternatively minimized by a constrained eigenvalue decomposition. Experiments on benchmark databases show that our MKC method indeed improves the recognition performance.
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