Edit model card

Link to Github Release

4xNomos2_realplksr_dysample
Scale: 4
Architecture: RealPLKSR with Dysample
Architecture Option: realplksr

Author: Philip Hofmann
License: CC-BY-0.4
Purpose: Pretrained
Subject: Photography
Input Type: Images
Release Date: 30.06.2024

Dataset: nomosv2
Dataset Size: 6000
OTF (on the fly augmentations): No
Pretrained Model: 4xmssim_realplksr_dysample_pretrain
Iterations: 185'000
Batch Size: 8
GT Size: 256, 512

Description:
A Dysample RealPLKSR 4x upscaling model that was trained with / handles jpg compression down to 70 on the Nomosv2 dataset, preserved DoF.
Based on the 4xmssim_realplksr_dysample_pretrain I released 3 days ago.
This model affects / saturate colors, which can be counteracted a bit by using wavelet color fix, as used in these examples.

Added a static (3 256 256) onnx conversion, with fp32 and fully optimized. This can be used with chaiNNer, since the dysample pth file would be unsupported. (Removed other conversions like statis with 128 because they would produce different results, but static 256 gives the same result as using the pth file with neosr testscript.

Showcase:
Slowpics

(Click on image for better view)
Example1 Example2 Example3 Example4 Example5 Example6 Example7 Example8 Example9 Example10 Example11 Example12 Example13

Downloads last month

-

Downloads are not tracked for this model. How to track
Inference Examples
Unable to determine this model's library. Check the docs .

Space using Phips/4xNomos2_realplksr_dysample 1