Publication | Closed Access
Image information and visual quality
167
Citations
31
References
2004
Year
Unknown Venue
DeblurringImage ProcessingImage AnalysisMachine VisionData ScienceVisual QualityEngineeringDistorted ImageMedical Image ComputingImage CodingVideo QualityShannon InformationDeep LearningImage Quality AssessmentImage QualityComputer VisionImage Enhancement
Measurement of image quality is crucial for many image-processing algorithms. Traditionally, image quality assessment algorithms predict visual quality by comparing a distorted image against a reference image, typically by modeling the human visual system (HVS), or by using arbitrary signal fidelity criteria. We adopt a new paradigm for image quality assessment. We propose an information fidelity criterion that quantifies the Shannon information that is shared between the reference and distorted images relative to the information contained in the reference image itself. We use natural scene statistics (NSS) modeling in concert with an image degradation model and an HVS model. We demonstrate the performance of our algorithm by testing it on a data set of 779 images, and show that our method is competitive with state of the art quality assessment methods, and outperforms them in our simulations.
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