USRNet
Visit ToolUSRNet is an image super-resolution tool that uses a deep unfolding network to enhance blurry, noisy images. It can handle various scale factors and blur kernels with a single model.
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USRNet is an image super-resolution tool that uses a deep unfolding network to enhance blurry, noisy images. It can handle various scale factors and blur kernels with a single model.
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Also listed in
About
USRNet is a deep unfolding network for image super-resolution, implementing a model described in a CVPR 2020 paper. This PyTorch-based tool provides code and models for training and testing image super-resolution algorithms. It leverages both learning-based and model-based methods, offering the flexibility of model-based approaches to super-resolve blurry and noisy images across different scale factors, blur kernels, and noise levels using a single unified model. Key features include a data module for clearer HR estimation, a prior module for cleaner HR estimation, and a hyper-parameter module to control outputs. It supports various degradation models, including bicubic degradation and deblurring, and demonstrates strong generalizability to different kernel sizes.
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Open Source
Free
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