Blind image quality assessment using subspace alignment

I. Kiran, T. Guha, Gaurav Pandey
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引用次数: 3

Abstract

This paper addresses the problem of estimating the quality of an image as it would be perceived by a human. A well accepted approach to assess perceptual quality of an image is to quantify its loss of structural information. We propose a blind image quality assessment method that aims at quantifying structural information loss in a given (possibly distorted) image by comparing its structures with those extracted from a database of clean images. We first construct a subspace from the clean natural images using (i) principal component analysis (PCA), and (ii) overcomplete dictionary learning with sparsity constraint. While PCA provides mathematical convenience, an overcomplete dictionary is known to capture the perceptually important structures resembling the simple cells in the primary visual cortex. The subspace learned from the clean images is called the source subspace. Similarly, a subspace, called the target subspace, is learned from the distorted image. In order to quantify the structural information loss, we use a subspace alignment technique which transforms the target subspace into the source by optimizing over a transformation matrix. This transformation matrix is subsequently used to measure the global and local (patch-based) quality score of the distorted image. The quality scores obtained by the proposed method are shown to correlate well with the subjective scores obtained from human annotators. Our method achieves competitive results when evaluated on three benchmark databases.
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基于子空间对齐的盲图像质量评估
本文解决了估计图像质量的问题,因为它将被人类感知。一种被广泛接受的评估图像感知质量的方法是量化其结构信息的损失。我们提出了一种盲图像质量评估方法,旨在通过将给定(可能失真的)图像的结构与从干净图像数据库中提取的图像进行比较,来量化图像中的结构信息损失。我们首先使用(i)主成分分析(PCA)和(ii)具有稀疏性约束的过完备字典学习从干净的自然图像中构建子空间。虽然PCA提供了数学上的便利,但已知一个过于完整的字典可以捕获类似初级视觉皮层中简单细胞的感知重要结构。从干净图像中学习到的子空间称为源子空间。类似地,从扭曲的图像中学习一个子空间,称为目标子空间。为了量化结构信息的损失,我们使用了一种子空间对齐技术,该技术通过对变换矩阵进行优化,将目标子空间转换为源空间。该变换矩阵随后用于测量畸变图像的全局和局部(基于补丁的)质量分数。所提出的方法获得的质量分数与人类注释者获得的主观分数具有良好的相关性。当在三个基准数据库上进行评估时,我们的方法获得了具有竞争力的结果。
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