An Attention-Based Approach for Single Image Super Resolution but with reduced number of channels and changes in network achitecture. It enhances the resolution of the input image by a factor of 4.
Low resolution:
Bicubic interpolation:
Super resolution:
Metric | Value |
---|---|
PSNR | 29.29 dB |
GFlops | 11.654 |
MParams | 0.030 |
Source framework | PyTorch* |
For reference, PSNR for bicubic upsampling on test dataset is 26.79 dB.
-
name: "0" , shape: [1x3x270x480] - An input image in the format [BxCxHxW], where:
- B - batch size
- C - number of channels
- H - image height
- W - image width.
-
name: "1" , shape: [1x3x1080x1920] - Bicubic interpolation of the input image in the format [BxCxHxW], where:
- B - batch size
- C - number of channels
- H - image height
- W - image width.
Expected color order is BGR.
- The net outputs one blobs with shapes [1, 3, 1080, 1920] that contains image after super resolution.
[*] Other names and brands may be claimed as the property of others.