Title :
Deep learning network for blind image quality assessment
Author :
Ke Gu ; Guangtao Zhai ; Xiaokang Yang ; Wenjun Zhang
Author_Institution :
Insti. of Image Commu. & Infor. Proce., Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
Nowadays, blind image quality assessment (BIQA) has been intensively studied with machine learning, such as support vector machine (SVM) and k-means. Existing BIQA metrics, however, do not perform robust for various kinds of distortion types. We believe this problem is because those frequently used traditional machine learning techniques exploit shallow architectures, which only contain one single layer of nonlinear feature transformation, and thus cannot highly mimic the mechanism of human visual perception to image quality. The recent advance of deep neural network (DNN) can help to solve this problem, since the DNN is found to better capture the essential attributes of images. We in this paper therefore introduce a new Deep learning based Image Quality Index (DIQI) for blind quality assessment. Extensive studies are conducted on the new TID2013 database and confirm the effectiveness of our DIQI relative to classical full-reference and state-of-the-art reduced- and no-reference IQA approaches.
Keywords :
distortion; image processing; learning (artificial intelligence); neural nets; visual databases; BIQA; DIQI; DNN; TID2013 database; blind image quality assessment; classical full-reference IQA approach; deep learning based image quality index; deep learning network; deep neural network; distortion types; human visual perception; machine learning techniques; nonlinear feature transformation; reduced-and no-reference IQA approach; Biological neural networks; Databases; Image quality; Measurement; Neurons; Nonlinear distortion; Quality assessment; Image quality assessment (IQA); blind / no-reference (NR); deep learning; machine learning;
Conference_Titel :
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location :
Paris
DOI :
10.1109/ICIP.2014.7025102