pipeline_tag: text-to-image
widget:
- text: >-
movie scene screencap, cinematic footage. thanos smelling a little yellow
rose. extreme wide angle,
output:
url: 1man.png
- text: 'A tiny robot taking a break under a tree in the garden '
output:
url: robot.png
- text: mystery
output:
url: mystery.png
- text: a cat wearing sunglasses in the summer
output:
url: cat.png
- text: 'robot holding a sign that says ’a storm is coming’ '
output:
url: storm.png
- text: the vibrance of the human soul
output:
url: soul.png
- text: >-
Lady of War, chique dark clothes, vinyl, imposing pose, anime style, 90s
natural photography of a man, glasses, cinematic,
output:
url: anime.png
- text: 'natural photography of a man, glasses, cinematic, '
output:
url: glasses.png
license: cc-by-nc-nd-4.0
Constructive Deconstruction: Domain-Agnostic Debiasing of Diffusion Models
A paper is currently in the works. We believe the breakthrough and said release of the weights should come BEFORE any paper or wait period.
Introduction
Constructive Deconstruction is a novel approach to debiasing diffusion models used in generative tasks like image synthesis. This method enhances the quality and fidelity of generated images across various domains by removing biases inherited from the training data. Our technique involves overtraining the model to a controlled noisy state, applying nightshading, and using bucketing techniques to realign the model's internal representations.
Methodology
Overtraining to Controlled Noisy State
By purposely overtraining the model until it predictably fails, we create a controlled noisy state. This state helps in identifying and addressing the inherent biases in the model's training data.
Nightshading
Nightshading is repurposed to induce a controlled failure, making it easier to retrain the model. This involves injecting carefully selected data points to stress the model and cause predictable failures.
Bucketing
Using mathematical techniques like slerp (Spherical Linear Interpolation) and bislerp (Bilinear Interpolation), we merge the induced noise back into the model. This step highlights the model's learned knowledge while suppressing biases.
Retraining and Fine-Tuning
The noisy state is retrained on a large, diverse dataset to create a new base model called "Mobius." Initial issues such as grainy details and inconsistent colors are resolved during fine-tuning, resulting in high-quality, unbiased outputs.
Results and Highlights
Increased Diversity of Outputs
Training the model on high-quality data naturally increases the diversity of the generated outputs without intentionally loosening associations. This leads to improved generalization and variety in generated images.
Empirical Validation
Extensive experiments and fine-tuning demonstrate the effectiveness of our method, resulting in high-quality, unbiased outputs across various styles and domains.
Usage and Recommendations
- Requires a CLIP skip of -3
This model supports and encourages experimentation with various tags, offering users the freedom to explore their creative visions in depth.
License
This model is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) license.