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arxiv:2103.01114

Deep Perceptual Image Quality Assessment for Compression

Published on Mar 1, 2021
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Abstract

A large-scale image compression quality dataset featuring human perceptual preferences enables the development of a deep learning-based full-reference perceptual quality assessment metric that outperforms existing methods and demonstrates superior generalization to unseen data.

AI-generated summary

Lossy Image compression is necessary for efficient storage and transfer of data. Typically the trade-off between bit-rate and quality determines the optimal compression level. This makes the image quality metric an integral part of any imaging system. While the existing full-reference metrics such as PSNR and SSIM may be less sensitive to perceptual quality, the recently introduced learning methods may fail to generalize to unseen data. In this paper we propose the largest image compression quality dataset to date with human perceptual preferences, enabling the use of deep learning, and we develop a full reference perceptual quality assessment metric for lossy image compression that outperforms the existing state-of-the-art methods. We show that the proposed model can effectively learn from thousands of examples available in the new dataset, and consequently it generalizes better to other unseen datasets of human perceptual preference.

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