Blind Image Quality Assessment Using Subspace Alignment
Title | Blind Image Quality Assessment Using Subspace Alignment |
Publication Type | Conference Paper |
Year of Publication | 2016 |
Authors | Kiran, Indra, Guha, Tanaya, Pandey, Gaurav |
Conference Name | Proceedings of the Tenth Indian Conference on Computer Vision, Graphics and Image Processing |
Publisher | ACM |
Conference Location | New York, NY, USA |
ISBN Number | 978-1-4503-4753-2 |
Keywords | blind image quality assessment, dictionary learning, pubcrawl170201, subspace alignment |
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. |
URL | http://doi.acm.org/10.1145/3009977.3010014 |
DOI | 10.1145/3009977.3010014 |
Citation Key | kiran_blind_2016 |