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  • 1. Ghosh Roy, Gourab A Simple Second Derivative Based Blur Estimation Technique

    Master of Science, The Ohio State University, 2013, Computer Science and Engineering

    Blur detection is a very important problem in image processing. Different sources can lead to blur in images, and much work has been done to have automated image quality assessment techniques consistent with human rating. In this work a no-reference second derivative based image metric for blur detection and estimation has been proposed. This method works by evaluating the magnitude of the second derivative at the edge points in an image, and calculating the proportion of edge points where the magnitude is greater than a certain threshold. Lower values of this proportion or the metric denote increased levels of blur in the image. Experiments show that this method can successfully differentiate between images with no blur and varying degrees of blur. Comparison with some other state-of-the-art quality assessment techniques on a standard dataset of Gaussian blur images shows that the proposed method gives moderately high performance values in terms of correspondence with human subjective scores. Coupled with the method's primary aspect of simplicity and subsequent ease of implementation, this makes it a probable choice for mobile applications.

    Committee: Brian Kulis (Advisor); Mikhail Belkin (Committee Member) Subjects: Computer Engineering; Computer Science