CVSep 10, 2017

A Detail Based Method for Linear Full Reference Image Quality Prediction

arXiv:1709.03124v321 citations
AI Analysis

This work addresses image quality prediction for applications like compression and processing, but it is incremental as it builds on existing full-reference methods with a novel decomposition approach.

The paper tackles image quality assessment by proposing a full-reference method that combines separate metrics for detail loss and spurious details, resulting in a new index strongly correlated with empirical DMOS scores across three databases and enabling alignment of data to a common scale.

In this paper, a novel Full Reference method is proposed for image quality assessment, using the combination of two separate metrics to measure the perceptually distinct impact of detail losses and of spurious details. To this purpose, the gradient of the impaired image is locally decomposed as a predicted version of the original gradient, plus a gradient residual. It is assumed that the detail attenuation identifies the detail loss, whereas the gradient residuals describe the spurious details. It turns out that the perceptual impact of detail losses is roughly linear with the loss of the positional Fisher information, while the perceptual impact of the spurious details is roughly proportional to a logarithmic measure of the signal to residual ratio. The affine combination of these two metrics forms a new index strongly correlated with the empirical Differential Mean Opinion Score (DMOS) for a significant class of image impairments, as verified for three independent popular databases. The method allowed alignment and merging of DMOS data coming from these different databases to a common DMOS scale by affine transformations. Unexpectedly, the DMOS scale setting is possible by the analysis of a single image affected by additive noise.

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