Biomedical Image Edge Detection Based on CNN

In this paper, the technique of biomedical image is presented by employing cellular neural networks (CNN) and linear matrix inequality (LMI). The main objective is to obtain the templates. Based on Cellular neural networks (CNN) is a high-speed parallel processor, this paper proposes a optimized templates for biomedical image edge detection.

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