Huggingface Repository (includes credits, Diffusers weights, and more): https://huggingface.co/RedRocket/furception_vae
This is a VAE decoder finetune, resumed from stabilityai/sd-vae-ft-mse using images from e621. It is trained with a mixture of MAE and MSE loss to maintain an acceptable balance between sharpness and smooth outputs, and loss is calculated in Oklab color space in order to prioritize image reconstruction based on which color channels are more perceptually significant.
Our testing has shown that the VAE is good at eliminating unwanted high-frequency noise when used on models trained on similar data. Results are far more apparent on flat-colored images than they are on realistic or painterly images, but we have not noticed any obvious loss of performance on any type of image. The effects are also more noticeable on lower-resolution generated images, but there are improvements at all resolutions. It may have some generalizability to a broader range of art styles due to the variety of different styles in the dataset.
Licensing:
This VAE is available under the terms of the CC BY-NC-SA 4.0 Deed. This license applies over permissions listed on CivitAI, in cases where they may appear to conflict. This applies to the use of the model, deployment, and distribution of the model weights only. The license does not apply to images decoded by this VAE and you may release them under any license, even public domain, as long as you are not creating them for commercial purposes. You are free and encouraged to distribute this VAE with models as long as you give credit and the VAE carries this license (the rest of the model does not need to share this license, although its distribution must be non-commercial), and I would ask that you include the version number so people can know if they need to get an updated version in the future.
Description
FAQ
Comments (10)
I can't see the difference in the pictures.
Currently working on generating more example pics to post here, the formatting here makes it a bit difficult though. The Huggingface page has an example with unmistakable differences.
Generate a pic featuring a face, and save it with this VAE. Then save it again with another VAE (do not regenerate it, do nothing except literally resave it). Compare them zoomed in, you WILL see a difference.
So am I right in assuming the name is just a name and this vae can work with non-furry checkpoints? Or is this intended to work with like furryrock and checkpoints designed with such training? Curious, thanks!
It can work with any checkpoint. It's intended for furry checkpoints, but since the dataset used contains a variety of styles it probably would generalize well to most artwork.
This VAE is better than any other SD 1.5 VAE for ALL types of images including fully realistic ones, I find. You can observe a good example of what I mean by zooming in and comparing eyes in an image saved with this versus images saved with anything else. So I don't really see what the furry-oriented marketing actually has to do wih anything at all TBH, this is just a generally great VAE.
Very glad to hear that it generalizes well! It is furry-oriented because that is what it was trained on and we never really thoroughly tested anything outside of that, but it's not too surprising that it works well for a broad variety of images compared to anime VAEs since furry images are a lot more varied by comparison.
Any chance you can enable this for use in the online generator?
Never used RedRocket's SD models (on the account), they all are trash, and the VAE is pretty useless
After zooming in and upscaling the images I still dont see any difference. The images look like copied to be side by side since the shadows and minor details look the exact same.
Details
Files
furceptionVAEV10By_v10.safetensors
Mirrors
furception_vae_1-0.safetensors
furceptionVAEV10By_v10.safetensors
furception_vae_1-0.safetensors
furceptionVAEV10By_v10.safetensors
furception_vae_1-0.safetensors
Furception.safetensors
furception_vae_1-0.safetensors
furception_vae_1-0.safetensors
furception_vae_1-0.safetensors
furception_vae_1-0.safetensors
furceptionVAEV10By_v10.safetensors
Available On (1 platform)
Same model published on other platforms. May have additional downloads or version variants.





