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Papers/Gradient Magnitude Similarity Deviation: A Highly Efficien...

Gradient Magnitude Similarity Deviation: A Highly Efficient Perceptual Image Quality Index

Wufeng Xue, Lei Zhang, Xuanqin Mou, Alan C. Bovik

2013-08-14PredictionImage Quality AssessmentImage RestorationImage Compression
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Abstract

It is an important task to faithfully evaluate the perceptual quality of output images in many applications such as image compression, image restoration and multimedia streaming. A good image quality assessment (IQA) model should not only deliver high quality prediction accuracy but also be computationally efficient. The efficiency of IQA metrics is becoming particularly important due to the increasing proliferation of high-volume visual data in high-speed networks. We present a new effective and efficient IQA model, called gradient magnitude similarity deviation (GMSD). The image gradients are sensitive to image distortions, while different local structures in a distorted image suffer different degrees of degradations. This motivates us to explore the use of global variation of gradient based local quality map for overall image quality prediction. We find that the pixel-wise gradient magnitude similarity (GMS) between the reference and distorted images combined with a novel pooling strategy the standard deviation of the GMS map can predict accurately perceptual image quality. The resulting GMSD algorithm is much faster than most state-of-the-art IQA methods, and delivers highly competitive prediction accuracy.

Results

TaskDatasetMetricValueModel
Image Quality AssessmentMSU FR VQA DatabaseSRCC0.8937GMSD
Image Quality AssessmentDRIQPLCC0.8001GMSD
Image Quality AssessmentDRIQSRCC0.7762GMSD
Image Quality AssessmentKADID10KSRCC0.8474GMSD
Image Quality AssessmentTID2008PLCC0.8788GMSD
Image Quality AssessmentTID2008SRCC0.8907GMSD
Image Quality AssessmentESPLPLCC0.8234GMSD
Image Quality AssessmentESPLSRCC0.8209GMSD
Full reference image quality assessmentDRIQPLCC0.8001GMSD
Full reference image quality assessmentDRIQSRCC0.7762GMSD
Full reference image quality assessmentKADID10KSRCC0.8474GMSD
Full reference image quality assessmentTID2008PLCC0.8788GMSD
Full reference image quality assessmentTID2008SRCC0.8907GMSD
Full reference image quality assessmentESPLPLCC0.8234GMSD
Full reference image quality assessmentESPLSRCC0.8209GMSD

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