Goto

Collaborating Authors

 unsupervised information-theoretic perceptual quality metric


An Unsupervised Information-Theoretic Perceptual Quality Metric

Neural Information Processing Systems

Tractable models of human perception have proved to be challenging to build. Hand-designed models such as MS-SSIM remain popular predictors of human image quality judgements due to their simplicity and speed. Recent modern deep learning approaches can perform better, but they rely on supervised data which can be costly to gather: large sets of class labels such as ImageNet, image quality ratings, or both. We combine recent advances in information-theoretic objective functions with a computational architecture informed by the physiology of the human visual system and unsupervised training on pairs of video frames, yielding our Perceptual Information Metric (PIM). We show that PIM is competitive with supervised metrics on the recent and challenging BAPPS image quality assessment dataset and outperforms them in predicting the ranking of image compression methods in CLIC 2020. We also perform qualitative experiments using the ImageNet-C dataset, and establish that PIM is robust with respect to architectural details.

  name change, proceedings, unsupervised information-theoretic perceptual quality metric, (3 more...)

Review for NeurIPS paper: An Unsupervised Information-Theoretic Perceptual Quality Metric

Neural Information Processing Systems

This paper proposes a novel perceptual image quality evaluation metric based on unsupervised method that aims optimization of a lower bound of the multivariate mutual information. The method is implemented using deep neural networks and tested two datasets, BAPPS and ImageNEt-C and was shown to achieve results comparable with supervised methods. The approach is well-motivated and clearly presented, and tackles an important problem without requiring subjective human judgements. One of the reviewers raise the question of applicability of the approach on compressed images. Others also suggest the experimentation part of the paper is somewhat preliminary.

  neurips paper, unsupervised information-theoretic perceptual quality metric

An Unsupervised Information-Theoretic Perceptual Quality Metric

Neural Information Processing Systems

Tractable models of human perception have proved to be challenging to build. Hand-designed models such as MS-SSIM remain popular predictors of human image quality judgements due to their simplicity and speed. Recent modern deep learning approaches can perform better, but they rely on supervised data which can be costly to gather: large sets of class labels such as ImageNet, image quality ratings, or both. We combine recent advances in information-theoretic objective functions with a computational architecture informed by the physiology of the human visual system and unsupervised training on pairs of video frames, yielding our Perceptual Information Metric (PIM). We show that PIM is competitive with supervised metrics on the recent and challenging BAPPS image quality assessment dataset and outperforms them in predicting the ranking of image compression methods in CLIC 2020.

  pim, unsupervised information-theoretic perceptual quality metric