Author/Authors :
H. R. Sheikh، نويسنده , , A. C. Bovik، نويسنده , , and L. Cormack، نويسنده ,
Abstract :
Measurement of image or video quality is crucial for
many image-processing algorithms, such as acquisition, compression,
restoration, enhancement, and reproduction. Traditionally,
image quality assessment (QA) algorithms interpret image quality
as similarity with a “reference” or “perfect” image. The obvious
limitation of this approach is that the reference image or video may
not be available to the QA algorithm. The field of blind, or no-reference,
QA, in which image quality is predicted without the reference
image or video, has been largely unexplored, with algorithms
focussing mostly on measuring the blocking artifacts. Emerging
image and video compression technologies can avoid the dreaded
blocking artifact by using various mechanisms, but they introduce
other types of distortions, specifically blurring and ringing. In this
paper, we propose to use natural scene statistics (NSS) to blindly
measure the quality of images compressed by JPEG2000 (or any
other wavelet based) image coder. We claim that natural scenes
contain nonlinear dependencies that are disturbed by the compression
process, and that this disturbance can be quantified and related
to human perceptions of quality. We train and test our algorithm
with data from human subjects, and show that reasonably
comprehensive NSS models can help us in making blind, but
accurate, predictions of quality. Our algorithm performs close to
the limit imposed on useful prediction by the variability between
human subjects.
Keywords :
Blind quality assessment (QA) , image QA , JPEG2000 , no reference (NR)image QA. , natural scene statistics (NSS)