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Deep Neural Networks for No-Reference and Full-Reference Image Quality Assessment

About

We present a deep neural network-based approach to image quality assessment (IQA). The network is trained end-to-end and comprises ten convolutional layers and five pooling layers for feature extraction, and two fully connected layers for regression, which makes it significantly deeper than related IQA models. Unique features of the proposed architecture are that: 1) with slight adaptations it can be used in a no-reference (NR) as well as in a full-reference (FR) IQA setting and 2) it allows for joint learning of local quality and local weights, i.e., relative importance of local quality to the global quality estimate, in an unified framework. Our approach is purely data-driven and does not rely on hand-crafted features or other types of prior domain knowledge about the human visual system or image statistics. We evaluate the proposed approach on the LIVE, CISQ, and TID2013 databases as well as the LIVE In the wild image quality challenge database and show superior performance to state-of-the-art NR and FR IQA methods. Finally, cross-database evaluation shows a high ability to generalize between different databases, indicating a high robustness of the learned features.

Sebastian Bosse, Dominique Maniry, Klaus-Robert M\"uller, Thomas Wiegand, Wojciech Samek• 2016

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentSPAQ
SRCC0.84
191
Image Quality AssessmentCSIQ
SRC0.909
138
Image Quality AssessmentTID 2013 (test)
Mean SRCC0.94
124
Image Quality AssessmentCSIQ (test)
SRCC0.962
103
Image Quality AssessmentLIVE
SRC0.947
96
Image Quality AssessmentKADID-10k (test)
SRCC0.931
91
Image Quality AssessmentKonIQ-10k (test)
SRCC0.797
91
Blind Image Quality AssessmentFLIVE
SRCC0.4346
86
Image Quality AssessmentTID 2013
SRC0.698
74
No-Reference Image Quality AssessmentKonIQ-10k
SROCC0.804
73
Showing 10 of 52 rows

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