Low-Rank Regularized Convex-Non-Convex Problems for Image Segmentation or Completion
By: Mohamed El Guide , Anas El Hachimi , Khalide Jbilou and more
Potential Business Impact:
Cleans up blurry pictures by filling in missing parts.
This work proposes a novel convex-non-convex formulation of the image segmentation and the image completion problems. The proposed approach is based on the minimization of a functional involving two distinct regularization terms: one promotes low-rank structure in the solution, while the other one enforces smoothness. To solve the resulting optimization problem, we employ the alternating direction method of multipliers (ADMM). A detailed convergence analysis of the algorithm is provided, and the performance of the methods is demonstrated through a series of numerical experiments.
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