Blur Measurement for Partially Blurred Images with Saliency Constrained Global Refinement.

ADVANCES IN MULTIMEDIA INFORMATION PROCESSING, PT III(2018)

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摘要
Blur measurement of partially blurred image is still far from being resolved. This calls for more distinctive blur features and, even more importantly, a global refinement strategy that has not been considered by existing studies. In this paper we propose a new spatial and frequencial coupled blur descriptor by composing the number of extreme points, the vector of all singular values and the entropy-weighted pooling of the high frequency DCT coefficients. We also introduce a global refinement scheme to explore the merits of saliency for further refining the initial measurements. Consequently, we propose a novel saliency constrained blur measurement method by integrating a neural network based blur metric and a superpixel-scale blur refinement together. Experimental results show the efficiency of our method qualitatively and quantitatively, especially for the images with flat textures.
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关键词
Partial blurred image,Blur measurement,Saliency
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