Publication | Closed Access
iPiano: Inertial Proximal Algorithm for Nonconvex Optimization
446
Citations
33
References
2014
Year
Numerical AnalysisMathematical ProgrammingEngineeringMachine LearningVariational AnalysisInertial Proximal AlgorithmUnconstrained OptimizationImage AnalysisDerivative-free OptimizationComputational ImagingApproximation TheoryConvergence AnalysisConvergence RateInverse ProblemsComputer ScienceNondifferentiable OptimizationAlgorithm Ipiano CombinesComputer VisionMinimization ProblemConvex Optimization
In this paper we study an algorithm for solving a minimization problem composed of a differentiable (possibly nonconvex) and a convex (possibly nondifferentiable) function. The algorithm iPiano combines forward-backward splitting with an inertial force. It can be seen as a nonsmooth split version of the Heavy-ball method from Polyak. A rigorous analysis of the algorithm for the proposed class of problems yields global convergence of the function values and the arguments. This makes the algorithm robust for usage on nonconvex problems. The convergence result is obtained based on the Kurdyka--Łojasiewicz inequality. This is a very weak restriction, which was used to prove convergence for several other gradient methods. First, an abstract convergence theorem for a generic algorithm is proved, and then iPiano is shown to satisfy the requirements of this theorem. Furthermore, a convergence rate is established for the general problem class. We demonstrate iPiano on computer vision problems---image denoising with learned priors and diffusion based image compression.
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