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No Reference, Opinion Unaware Image Quality Assessment by Anomaly Detection.

Marco LeonardiPaolo NapoletanoRaimondo SchettiniAlessandro Rozza
Published in: Sensors (Basel, Switzerland) (2021)
We propose an anomaly detection based image quality assessment method which exploits the correlations between feature maps from a pre-trained Convolutional Neural Network (CNN). The proposed method encodes the intra-layer correlation through the Gram matrix and then estimates the quality score combining the average of the correlation and the output from an anomaly detection method. The latter evaluates the degree of abnormality of an image by computing a correlation similarity with respect to a dictionary of pristine images. The effectiveness of the method is tested on different benchmarking datasets (LIVE-itW, KONIQ, and SPAQ).
Keyphrases
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