A Lightweight Regression Network Construction Method Based on Prior Filtering
A network construction and lightweight technology, applied in the field of deep learning, can solve the problem of massive parameters, achieve the effect of small storage space, speed up network training, and reduce the amount of learnable parameters
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[0049] In this embodiment, the method for constructing a lightweight regression network based on prior filtering is as follows: first, perform a specified degeneration operation on each original image in the original image set, obtain the corresponding degraded image, cut the original image and the corresponding degraded image into image blocks, and obtain the training Sample pair; clustering is performed in the training sample pair, and the training sample pair is divided into different categories according to the clustering results; Ternary quantization; use the prior filter after ternary quantization to construct a lightweight regression network, the lightweight regression network includes a multi-stage filter layer, an activation function layer, and a convolution output layer; by training the lightweight regression network, the input degraded image can be reconstructed end-to-end to a higher quality image.
[0050] In the specific implementation, follow the steps below:
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