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Toward a No-Reference Quality Metric for Camera-Captured Images

Runze Hu, Yutao Liu, Ke Gu, Xiongkuo Min, Guangtao Zhai

2021IEEE Transactions on Cybernetics30 citationsDOI

Abstract

Existing no-reference (NR) image quality assessment (IQA) metrics are still not convincing for evaluating the quality of the camera-captured images. Toward tackling this issue, we, in this article, establish a novel NR quality metric for quantifying the quality of the camera-captured images reliably. Since the image quality is hierarchically perceived from the low-level preliminary visual perception to the high-level semantic comprehension in the human brain, in our proposed metric, we characterize the image quality by exploiting both the low-level image properties and the high-level semantics of the image. Specifically, we extract a series of low-level features to characterize the fundamental image properties, including the brightness, saturation, contrast, noiseness, sharpness, and naturalness, which are highly indicative of the camera-captured image quality. Correspondingly, the high-level features are designed to characterize the semantics of the image. The low-level and high-level perceptual features play complementary roles in measuring the image quality. To infer the image quality, we employ the support vector regression (SVR) to map all the informative features to a single quality score. Thorough tests conducted on two standard camera-captured image databases demonstrate the effectiveness of the proposed quality metric in assessing the image quality and its superiority over the state-of-the-art NR quality metrics. The source code of the proposed metric for camera-captured images is released at https://github.com/YT2015?tab=repositories.

Topics & Concepts

Image qualityMetric (unit)Artificial intelligenceComputer scienceSemantics (computer science)Quality (philosophy)Image (mathematics)Pattern recognition (psychology)Quality ScoreComputer visionPerceptionSupport vector machineData miningCode (set theory)Contextual image classificationImage processingVisualizationAutomatic image annotationSource codeFeature extractionStandard test imageFeature detection (computer vision)Image textureQuality assessmentImage and Video Quality AssessmentVisual Attention and Saliency DetectionAdvanced Image Processing Techniques
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