High Frequency Content based Stimulus for Perceptual Sharpness Assessment in Natural Images
Ashirbani Saha, Q. M. Jonathan Wu

TL;DR
This paper introduces a blind, no-training method for assessing perceptual sharpness in natural images by leveraging high frequency content and local contrast, showing improved accuracy over existing techniques.
Contribution
The work proposes a novel sharpness assessment approach based on high frequency content and local standard deviation, eliminating the need for training and outperforming state-of-the-art methods.
Findings
Effective in blind perceptual sharpness evaluation
Performs well across different images and blur levels
Outperforms existing sharpness assessment techniques
Abstract
A blind approach to evaluate the perceptual sharpness present in a natural image is proposed. Though the literature demonstrates a set of variegated visual cues to detect or evaluate the absence or presence of sharpness, we emphasize in the current work that high frequency content and local standard deviation can form strong features to compute perceived sharpness in any natural image, and can be considered an able alternative for the existing cues. Unsharp areas in a natural image happen to exhibit uniform intensity or lack of sharp changes between regions. Sharp region transitions in an image are caused by the presence of spatial high frequency content. Therefore, in the proposed approach, we hypothesize that using the high frequency content as the principal stimulus, the perceived sharpness can be quantified in an image. When an image is convolved with a high pass filter, higher…
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Taxonomy
TopicsImage and Video Quality Assessment · Image Enhancement Techniques · Advanced Image Processing Techniques
