Two-frames image superresolution based on the aggregate divergence matrix

The paper describes the method image superresolution from two frames on the basis of aggregate divergence matrix elements of the theory and genetic algorithms. Shows different ways for building oversampling images algorithms based on the proposed method. Experimentally established the effectiveness of the procedures oversampling images at high zoom resolution by the developed method. Comparative performance evaluation method with existing ones.

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