Abstract:The activation function can increase the nonlinearity of the algorithm and improve the complexity of the algorithm in the super-resolution reconstruction algorithm. Using the ReLU activation function, the algorithm has the advantage of short training time, and in view of the problem that the negative value is zeroed through the ReLU activation function, resulting in the inactivation of some neurons, the inactivated part is re-added to the model through the rReLU function, and the method is named FSRCNN supplementary module. The results show that the peak signal-to-noise ratio of the supplementary module algorithm is 0.1dB higher than that of the original FSRCNN algorithm under the condition of magnification of 4, so the supplementary module can improve the performance of the model and enhance the extraction of information by the model.
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