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Preprints of the Keldysh Institute of Applied Mathematics, 2022, 086, 15 pp.
DOI: https://doi.org/10.20948/prepr-2022-86
(Mi ipmp3111)
 

Applicability limitations of differentiable full-reference image quality metrics

M. V. Siniukov, D. L. Kulikov, D. S. Vatolin, V. A. Galaktionov
References:
Abstract: Subjective image-quality measurement plays a critical role in the development of image-processing applications. The purpose of a visual-quality metric is to approximate the results of subjective assessment. In this regard, more and more metrics are under development, but little research has considered their limitations. This paper addresses that deficiency: we show how image preprocessing before compression can artificially increase the quality scores provided by the popular metrics DISTS, LPIPS, HaarPSI, and VIF as well as how these scores are inconsistent with subjective-quality scores. We propose a series of neural-network preprocessing models that increase DISTS by up to 34.5%, LPIPS by up to 36.8%, VIF by up to 98.0%, and HaarPSI by up to 22.6% in the case of JPEG-compressed images. A subjective comparison of preprocessed images showed that for most of the metrics we examined, visual quality drops or stays unchanged, limiting the applicability of these metrics.
Keywords: metrics hacking, video processing, image compression.
Funding agency Grant number
Russian Science Foundation 22-21-00478
Document Type: Preprint
Language: Russian
Citation: M. V. Siniukov, D. L. Kulikov, D. S. Vatolin, V. A. Galaktionov, “Applicability limitations of differentiable full-reference image quality metrics”, Keldysh Institute preprints, 2022, 086, 15 pp.
Citation in format AMSBIB
\Bibitem{SinKulVat22}
\by M.~V.~Siniukov, D.~L.~Kulikov, D.~S.~Vatolin, V.~A.~Galaktionov
\paper Applicability limitations of differentiable full-reference image quality metrics
\jour Keldysh Institute preprints
\yr 2022
\papernumber 086
\totalpages 15
\mathnet{http://mi.mathnet.ru/ipmp3111}
\crossref{https://doi.org/10.20948/prepr-2022-86}
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    Препринты Института прикладной математики им. М. В. Келдыша РАН
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