Gowthami Somepalli Profile picture
Jan 2, 2023 9 tweets 4 min read Read on X
DreamBooth: Assign a rare sequence of tokens as the subject's identifier and fine-tune the diffusion model on the small set of images with the "subject". A 🧵

Paper: arxiv.org/abs/2208.12242

Day 1 #30daysofDiffusion #Diffusion #MachineLearning Image
The authors use the Imagen model in this paper which uses T5-XXL language model to encode the text guidance to generate small 64x64 image first and then use a super-resolution model to blow it up to 1024x1024.
The authors observed that fine-tuning all the modules (including SR module) results in the best performance.
To prevent overfitting of the model to the small input dataset, the authors use prior-preservation loss, which is like "distillation from the original pretrained model". In the following loss term, "c" is the prompt with the subject's identifier and c_pr is without it. Image
So the overall fine-tuning pipeline is as follows. The yellow module refers to the first loss term and second yellow refers to the second loss term from the above tweet. Once the text2image part is finetuned on the input set of images, the authors then fine-tune the SR module. Image
The model is quite versatile and can do lots of things, like content change wrt the background or the object itself, style change, and so on. ImageImageImage
Prior preservation loss is important, otherwise, the model will output only the "subject" for a given noun. Image
Failure cases: Might not work on rare categories, might overfit and output the training data for some instances, and appearance might change based on certain text prompts. Image
Some useful resources -
Finetuning your own dreambooth model using huggingface - huggingface.co/docs/diffusers…

Unofficial implementation for SD - github.com/XavierXiao/Dre…

• • •

Missing some Tweet in this thread? You can try to force a refresh
 

Keep Current with Gowthami Somepalli

Gowthami Somepalli Profile picture

Stay in touch and get notified when new unrolls are available from this author!

Read all threads

This Thread may be Removed Anytime!

PDF

Twitter may remove this content at anytime! Save it as PDF for later use!

Try unrolling a thread yourself!

how to unroll video
  1. Follow @ThreadReaderApp to mention us!

  2. From a Twitter thread mention us with a keyword "unroll"
@threadreaderapp unroll

Practice here first or read more on our help page!

More from @gowthami_s

Jun 5, 2023
📃🚨 Does your diffusion model copy from the training data? How to find such behavior? Why does it happen? Can we somehow mitigate it?

A summary of recent work on understanding training data replication in recent T2I #diffusion models. A long 🧶

#machinelearning #aigeneration
Paper links
paper 1 -
paper 2 - https://t.co/mc78WKj4uHarxiv.org/abs/2212.03860
arxiv.org/abs/2305.20086
1/ Let's start with the definition of "replication" in our study. We consider something a copy if it is perceptually very similar to all/ majority of training image patches. In the example below, we consider all the yellow highlighted matches as potential copies.
Read 31 tweets
Jan 11, 2023
Retrieval Augmented #Diffusion (RDM) models: Smaller diffusion models can generate high-quality generations by accessing an external memory to guide the generation. Inspired by Deepmind's RETRO.

A 🧶

Paper: arxiv.org/abs/2204.11824

Day 10 #30daysofDiffusion #MachineLearning Image
If the model can rely on this external memory always, it just has to learn important details about the image generation process such as the composition of scenes rather than, for example, remembering how different dogs look like.
Setting: X is the training set and D is a *disjoint* image set which is used for retrieval. θ denotes the parameters of the diffusion model. ξ is the retrieval function which takes in an image and selects "k" images from D. φ is a pretrained image encoder.
Read 18 tweets
Jan 10, 2023
StructureDiffusion: Improve the compositional generation capabilities of text-to-image #diffusion models by modifying the text guidance by using a constituency tree or a scene graph.

A 🧵

Paper: arxiv.org/abs/2212.05032

Day 9 #30daysofDiffusion #MachineLearning
T2I models like SD produce great aesthetically pleasing generations for a given prompt, however, most of us never get them right on the first try. Sometimes the model ignores part of the prompt and some objects we want in the picture are missing.
Also sometimes the model gets adjectives mixed up. For example, in the figure below, the prompt is - "red car and white sheep". However, the model produced a red sheep too!

The authors address this compositionality issue in this paper.
Read 13 tweets
Jan 9, 2023
InstructPix2Pix: Edit an image using text guidance using a single forward pass. Why use any inversion or other stuff,just create a dataset using inversion techniques and train a new model.

A 🧶

Paper: arxiv.org/abs/2211.09800

Day 8 #30daysofDiffusion #Diffusion #MachineLearning Image
It should be fast when you want to edit an image in real-time. Models like textual inversion or prompt-to-prompt optimize during inference which makes them slow.
In this paper, the authors cleverly use such techniques to generate the training data and then finetune Stable Diffusion to perform edits in a single forward pass. They use 2 pretrained models, GPT-3 Davinci model and the SD model to generate the data.
Read 11 tweets

Did Thread Reader help you today?

Support us! We are indie developers!


This site is made by just two indie developers on a laptop doing marketing, support and development! Read more about the story.

Become a Premium Member ($3/month or $30/year) and get exclusive features!

Become Premium

Don't want to be a Premium member but still want to support us?

Make a small donation by buying us coffee ($5) or help with server cost ($10)

Donate via Paypal

Or Donate anonymously using crypto!

Ethereum

0xfe58350B80634f60Fa6Dc149a72b4DFbc17D341E copy

Bitcoin

3ATGMxNzCUFzxpMCHL5sWSt4DVtS8UqXpi copy

Thank you for your support!

Follow Us!

:(