DocumentCode
639397
Title
Learning without Human Scores for Blind Image Quality Assessment
Author
Wufeng Xue ; Lei Zhang ; Xuanqin Mou
Author_Institution
Inst. of Im. Pro. & Pat. Rec, Xi´an Jiaotong Univ., Xi´an, China
fYear
2013
fDate
23-28 June 2013
Firstpage
995
Lastpage
1002
Abstract
General purpose blind image quality assessment (BIQA) has been recently attracting significant attention in the fields of image processing, vision and machine learning. State-of-the-art BIQA methods usually learn to evaluate the image quality by regression from human subjective scores of the training samples. However, these methods need a large number of human scored images for training, and lack an explicit explanation of how the image quality is affected by image local features. An interesting question is then: can we learn for effective BIQA without using human scored images? This paper makes a good effort to answer this question. We partition the distorted images into overlapped patches, and use a percentile pooling strategy to estimate the local quality of each patch. Then a quality-aware clustering (QAC) method is proposed to learn a set of centroids on each quality level. These centroids are then used as a codebook to infer the quality of each patch in a given image, and subsequently a perceptual quality score of the whole image can be obtained. The proposed QAC based BIQA method is simple yet effective. It not only has comparable accuracy to those methods using human scored images in learning, but also has merits such as high linearity to human perception of image quality, real-time implementation and availability of image local quality map.
Keywords
image processing; learning (artificial intelligence); pattern clustering; regression analysis; BIQA methods; QAC method; centroids; general purpose blind image quality assessment; human scored images; human subjective scores; image local features; image local quality map; image processing; machine learning; overlapped patches; percentile pooling strategy; perceptual quality score; quality-aware clustering method; regression analysis; training samples; Databases; Feature extraction; Image coding; Image quality; Linearity; Training; Transform coding; bind image quality assessment; clustering; qualiyt aware;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location
Portland, OR
ISSN
1063-6919
Type
conf
DOI
10.1109/CVPR.2013.133
Filename
6618977
Link To Document