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Image Noise Cancellation Using Linear Matrix Inequality and Cellular Neural Network

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Figure

Figure 1. The training system
Figure 2. The system structure of cell (i,j)
Figure 4. Training sample  (a) corrupted image with 10% noise (b) desired image
Figure 5. Noise ratio in 5%  (d)

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