DocumentCode
14582
Title
Blind Image Quality Assessment via Deep Learning
Author
Weilong Hou ; Xinbo Gao ; Dacheng Tao ; Xuelong Li
Author_Institution
Sch. of Electron. Eng., Xidian Univ., Xi´an, China
Volume
26
Issue
6
fYear
2015
fDate
Jun-15
Firstpage
1275
Lastpage
1286
Abstract
This paper investigates how to blindly evaluate the visual quality of an image by learning rules from linguistic descriptions. Extensive psychological evidence shows that humans prefer to conduct evaluations qualitatively rather than numerically. The qualitative evaluations are then converted into the numerical scores to fairly benchmark objective image quality assessment (IQA) metrics. Recently, lots of learning-based IQA models are proposed by analyzing the mapping from the images to numerical ratings. However, the learnt mapping can hardly be accurate enough because some information has been lost in such an irreversible conversion from the linguistic descriptions to numerical scores. In this paper, we propose a blind IQA model, which learns qualitative evaluations directly and outputs numerical scores for general utilization and fair comparison. Images are represented by natural scene statistics features. A discriminative deep model is trained to classify the features into five grades, corresponding to five explicit mental concepts, i.e., excellent, good, fair, poor, and bad. A newly designed quality pooling is then applied to convert the qualitative labels into scores. The classification framework is not only much more natural than the regression-based models, but also robust to the small sample size problem. Thorough experiments are conducted on popular databases to verify the model´s effectiveness, efficiency, and robustness.
Keywords
image classification; learning (artificial intelligence); numerical analysis; regression analysis; visual databases; IQA metrics; blind image quality assessment; classification framework; databases; deep learning; discriminative deep model; explicit mental concepts; extensive psychological evidence; fair comparison; general utilization; linguistic descriptions; model effectiveness; model efficiency; model robustness; natural scene statistics features; numerical ratings; numerical scores; qualitative evaluations; quality pooling; visual quality; Databases; Image quality; Image representation; Measurement; Numerical models; Training; Visualization; Deep learning; image quality assessment (IQA); natural scene statistics (NSS); no reference;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2336852
Filename
6872541
Link To Document