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Unsupervised learning of multi-task deep variational model
Affiliation:1. College of Information Science and Engineering, Ningbo University, Ningbo 315211, China;2. School of Electronics and Information Engineering, Ningbo University of Technology, Ningbo 315211, China
Abstract:We propose a general deep variational model (reduced version, full version as well as the extension) via a comprehensive fusion approach in this paper. It is able to realize various image tasks in a completely unsupervised way without learning from samples. Technically, it can properly incorporate the CNN based deep image prior (DIP) architecture into the classic variational image processing models. The minimization problem solving strategy is transformed from iteratively minimizing the sub-problem for each variable to automatically minimizing the loss function by learning the generator network parameters. The proposed deep variational (DV) model contributes to the high order image edition and applications such as image restoration, inpainting, decomposition and texture segmentation. Experiments conducted have demonstrated significant advantages of the proposed deep variational model in comparison with several powerful techniques including variational methods and deep learning approaches.
Keywords:Unsupervised learning  Integration approach  Deep neural networks  Variational general frameworks  Diverse applications
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