upscales / cc-by-nc-sa /Kim2091 /4x-UniScaleV2_Mod.Shapr.Soft.INFO.txt
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**Name:** 4x-UniScaleV2_Soft/Moderate/Sharp
**Author:** Kim2091
**License:** CC BY-NC-SA 4.0
**Link:** <https://mega.nz/folder/zZhA1KoD#ds2nmgDNV4hfFpNSfEqN6Q>
**Model Architecture:** ESRGAN
**Scale:** 4
**Purpose:** Effectively a UniScale successor. It does nearly everything better, other than dealing with noise or compression. Use UniScale_Restore or UniScale_Iterp for that.
**Iterations:** 111k
**batch_size:** 4
**HR_size:** 112
**Epoch:** 8
**Dataset:** Custom Dataset consisting of lossless 4k frames from Metal Arms: Glitch in the System, Just Cause 3, Dirt 3, Forza Horizon 3, Sleeping Dogs, and self-edited photos from SignatureEdits + ATLA DVD images
**Dataset_size:** 18,909 tiles + 288 ATLA Frames
**OTF Training** Yes (JPEG artifacts, base_blur, bsrgan_resize)
**Pretrained_Model_G:** 4xESRGAN
**Description:** I really don't have a great description for this model set. It just works well on nearly everything (other than Anime sadly). They work best with realistic images. I hope you guys like it :stuck_out_tongue:
The Moderate and Soft models are interpolations between UniScaleV2_Sharp, UniScale-Strong, and UniScaleNR-Balanced.
If your image has compression, the Soft model will work the best. Moderate and Sharp will work on images with compression, but they won't be as clean.
UniScale_Restore or UniScale_Interp (available in the main UniScale folder) will likely work better for images with heavy compression.
Comparisons:
https://cdn.discordapp.com/attachments/884239326471393331/884296266857713704/unknown.png
https://cdn.discordapp.com/attachments/884239326471393331/884294468709257216/unknown.png
https://cdn.discordapp.com/attachments/884239326471393331/884298572894441512/unknown.png
https://cdn.discordapp.com/attachments/884239326471393331/884302370136289323/unknown.png