A NOVEL UNSUPERVISED DECONVOLUTION NETWORK:EFFICIENT FOR A SPARSE SOURCE

  • Choi, Seung-Jin (School of Electrical and Electronics Engineering Chungbuk National University)
  • Published : 1998.10.01

Abstract

This paper presents a novel neural network structure to the blind deconvolution task where the input (source) to a system is not available and the source has any type of distribution including sparse distribution. We employ multiple sensors so that spatial information plays a important role. The resulting learning algorithm is linear so that it works for both sub-and super-Gaussian source. Moreover, we can successfully deconvolve the mixture of a sparse source, while most existing algorithms [5] have difficulties in this task. Computer simulations confirm the validity and high performance of the proposed algorithm.

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