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Research Paper | Electronics & Communication Engineering | India | Volume 8 Issue 11, November 2019 | Rating: 6.6 / 10
Estimation of Blur and Depth_Map of a De-focused Image by Sparsity using Gauss Markov Random Field Convex-Prior
Latha H N, H N Poornima
Abstract: In this work, we propose a new method for blur-map and depth estimation from de-focused observations using just noticeable blur (JNB) [1] method. Using JNB, we find the blur-map and then estimate the depth of the image in the depth from de-focus setting. We use a novel regularization based optimization framework, wherein we assume the blur-map as Gauss Markov random field. We initially obtain robust estimates of the blur-map then depth of the scene using a convex prior [2]. We show that JNB and clear dictionaries are not replaceable when conducting sparse patch reconstruction. We also show that the estimated blur-map which is utilized for efficient restoration of latent image by de-blurring.
Keywords: Space-variant Blur-map, Just Noticeable Blur, Gradient Descent, GMRF, Convexity
Edition: Volume 8 Issue 11, November 2019,
Pages: 728 - 733