Super-resolution image reconstruction method based on progressive deep residual network
A low-resolution image and image reconstruction technology, applied in the field of image digital processing, can solve the problem of image detail information loss and other issues
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[0050] The method of the present invention will be further described below through specific examples.
[0051] A method for super-resolution image reconstruction based on a progressive deep residual network, comprising the following steps:
[0052] Step 1: Select T91 image data set and BSD200 image data set as training data set, select Set5 image data set, Set14 image data set and Urban100 image data set as test data set; conduct 90°, 180°, 270° rotation and scaling by 0.9, 0.8, 0.7, 0.6 to expand the training dataset image;
[0053] Step 2: Use the bicubic interpolation algorithm (Bicubic algorithm) to perform 1 / N ratio downsampling on the training data set image obtained in step 1, where N is the scaling factor; the value of N is selected according to the multiple of reconstruction required, generally Take 2 or 4;
[0054] Step 3: Crop the original training data set image and the low-resolution image obtained in step 2 into image blocks with sizes of H×W and H / N×W / N pixels...
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