Type of Blur and Blur Parameters Identification Using Neural Network and Its Application to Image Restoration

نویسندگان

  • Igor N. Aizenberg
  • Taras Bregin
  • Constantine Butakoff
  • Victor N. Karnaukhov
  • Nickolay S. Merzlyakov
  • Olga Milukova
چکیده

The original solution of the blur and blur parameters identification problem is presented in this paper. A neural network based on multi-valued neurons is used for the blur and blur parameters identification. It is shown that using simple single-layered neural network it is possible to identify the type of the distorting operator. Four types of blur are considered: defocus, rectangular, motion and Gaussian ones. The parameters of the corresponding operator are identified using a similar neural network. After a type of blur and its parameters identification the image can be restored using several kinds of methods.

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تاریخ انتشار 2002