Title :
A Patch-Structure Representation Method for Quality Assessment of Contrast Changed Images
Author :
Shiqi Wang ; Kede Ma ; Yeganeh, Hojatollah ; Zhou Wang ; Weisi Lin
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
Contrast is a fundamental attribute of images that plays an important role in human visual perception of image quality. With numerous approaches proposed to enhance image contrast, much less work has been dedicated to automatic quality assessment of contrast changed images. Existing approaches rely on global statistics to estimate contrast quality. Here we propose a novel local patch-based objective quality assessment method using an adaptive representation of local patch structure, which allows us to decompose any image patch into its mean intensity, signal strength and signal structure components and then evaluate their perceptual distortions in different ways. A unique feature that differentiates the proposed method from previous contrast quality models is the capability to produce a local contrast quality map, which predicts local quality variations over space and may be employed to guide contrast enhancement algorithms. Validations based on four publicly available databases show that the proposed patch-based contrast quality index (PCQI) method provides accurate predictions on the human perception of contrast variations.
Keywords :
image enhancement; image representation; visual perception; adaptive representation; automatic quality assessment; contrast changed images; global statistics; human visual perception; image contrast enhancement; image patch decomposition; image quality; local patch structure; local patch-based objective quality assessment; mean intensity; patch-based contrast quality index; patch-structure representation; perceptual distortions; signal strength; signal structure components; Computers; Distortion; Image quality; Indexes; Quality assessment; Signal processing algorithms; Contrast change; image quality assessment; patch representation; structural information;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2015.2487369