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No-Reference Blur Assessment of Digital Pictures Based on Multifeature Classifiers
2011
IEEE Transactions on Image Processing
In this paper, we address the problem of no-reference quality assessment for digital pictures corrupted with blur. We start with the generation of a large real image database containing pictures taken by human users in a variety of situations, and the conduction of subjective tests to generate the ground truth associated to those images. Based upon this ground truth, we select a number of high quality pictures and artificially degrade them with different intensities of simulated blur (gaussian
doi:10.1109/tip.2010.2053549
pmid:21172744
fatcat:6prq6pw73zcjldnl3iftvchzoa