license: cc-by-4.0
datasets:
- calm-and-collected/wish_you_were_here
language:
- en
pipeline_tag: text-to-image
tags:
- art
- vintage
- postcard
- lora
- diffuser
Wish You Were Here - a Stable diffusion 1.5 LORA for vintage postcard replication
Wish you were here is a LORA model developped to create vintage postcard images. The model was trained on Stable Diffusion 1.5.
Model Description
Wish You Were Here (WYWH) is a LORA model developped to replicate the look and feel of vintage postcards. This is done via harvesting public domain images from WikiMedia via manual review and using a combination of manual and automated annotation to describe the images. The specific feature desired to extract were: color, damage and printing technique. The model was developped over a duration of 2 days over 100 epochs of which one epoch was taken as resulting image.
- Developed by: calm-and-collected
- Model type: LORA
- License: CC-BY 4.0
- Finetuned from model [optional]: Stable diffusion 1.5 pruned
Bias, Risks, and Limitations
The model is trained of images from ~650 images. From observation, the majority of these images are from american origins. The model is thus excelent at replicating USA destinations. The model will also replicate damage seen in the images.
[More Information Needed]
Recommendations
To use the WYWH model, use your favorite Stable Diffusion model (the recommended model is a realistic model) and use the LORA along with the following triggers:
- WYWH (the base trigger)
- Photograph (for photography postcards)
- Drawing (for drawn postcards)
- Damage (to add scratch and water damage to the generation)
- Monochrome (for black and white images)
For negatives, your can use the following:
- White border (if you do not want a white border)
How to Get Started with the Model
You can use this model with automatic1111, comfyui and sdnext.
[More Information Needed]
Training Details
Training Data
The Wish You Were Here dataset consists out of ~650 images of postcards from 1900-1970. Dataset: origional dataset.
Training Hyperparameters
Kohya_SS paramaters
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The model was trained on two GTX 4090 for a duration of 2 days to extract 100 epochs of the model.
Software
The model was trained via the Kohya_SS gui.
Model Card Contact
Use the community section of this repository to contact me.