Learning to Rank for Blind Image Quality Assessment

09/01/2013
by   Fei Gao, et al.
0

Blind image quality assessment (BIQA) aims to predict perceptual image quality scores without access to reference images. State-of-the-art BIQA methods typically require subjects to score a large number of images to train a robust model. However, the acquisition of image quality scores has several limitations: 1) scores are not precise, because subjects are usually uncertain about which score most precisely represents the perceptual quality of a given image; 2) subjective judgements of quality may be biased by image content; 3) the quality scales between different distortion categories are inconsistent; and 4) it is challenging to obtain a large scale database, or to extend existing databases, because of the inconvenience of collecting sufficient images, training the subjects, conducting subjective experiments, and realigning human quality evaluations. To combat these limitations, this paper explores and exploits preference image pairs such as "the quality of image Ia is better than that of image Ib" for training a robust BIQA model. The preference label, representing the relative quality of two images, is generally precise and consistent, and is not sensitive to image content, distortion type, or subject identity; such PIPs can be generated at very low cost. The proposed BIQA method is one of learning to rank. We first formulate the problem of learning the mapping from the image features to the preference label as one of classification. In particular, we investigate the utilization of a multiple kernel learning algorithm based on group lasso (MKLGL) to provide a solution. A simple but effective strategy to estimate perceptual image quality scores is then presented. Experiments show that the proposed BIQA method is highly effective and achieves comparable performance to state-of-the-art BIQA algorithms. Moreover, the proposed method can be easily extended to new distortion categories.

READ FULL TEXT

page 2

page 3

page 7

page 9

research
04/13/2019

dipIQ: Blind Image Quality Assessment by Learning-to-Rank Discriminable Image Pairs

Objective assessment of image quality is fundamentally important in many...
research
08/28/2017

A Probabilistic Quality Representation Approach to Deep Blind Image Quality Prediction

Blind image quality assessment (BIQA) remains a very challenging problem...
research
08/04/2022

Image Quality Assessment: Learning to Rank Image Distortion Level

Over the years, various algorithms were developed, attempting to imitate...
research
03/02/2022

Parameterized Image Quality Score Distribution Prediction

Recently, image quality has been generally describedby a mean opinion sc...
research
07/31/2021

Subjective Image Quality Assessment with Boosted Triplet Comparisons

In subjective full-reference image quality assessment, differences betwe...
research
11/21/2020

Rank-smoothed Pairwise Learning In Perceptual Quality Assessment

Conducting pairwise comparisons is a widely used approach in curating hu...
research
07/18/2023

Regression-free Blind Image Quality Assessment

Regression-based blind image quality assessment (IQA) models are suscept...

Please sign up or login with your details

Forgot password? Click here to reset