2.5 KiB
Latent blending enables the creation of super-smooth video transitions between prompts. Powered by stable diffusion 2.1, this method involves specific mixing of intermediate latent representations to create a seamless transition – with users having the option to choose full customization or preset options.
Quickstart
fp_ckpt = 'path_to_SD2.ckpt'
fp_config = 'path_to_config.yaml'
sdh = StableDiffusionHolder(fp_ckpt, fp_config, 'cuda')
lb = LatentBlending(sdh)
lb.load_branching_profile(quality='medium', depth_strength=0.4)
lb.set_prompt1('photo of my first prompt1')
lb.set_prompt2('photo of my second prompt')
imgs_transition = lb.run_transition()
Gradio UI
To run the UI on your local machine, run gradio_ui.py
Example 1: Simple transition
To run a simple transition between two prompts, run example1_standard.py
Example 2: Inpainting transition
To run a transition between two prompts where you want some part of the image to remain static, run example2_inpaint.py
Example 3: Multi transition
To run multiple transition between K prompts, resulting in a stitched video, run example3_multitrans.py
Relevant parameters
Installation
Packages
pip install -r requirements.txt
Download Models from Huggingface
Download the Stable Diffusion v2-1_768 Model
Download the Stable Diffusion Inpainting Model (optional)
Download the Stable Diffusion x4 Upscaler (optional)
(Optional but recommended) Install Xformers
With xformers, stable diffusion will run faster with smaller memory inprint. Necessary for higher resolutions / upscaling model.
conda install xformers -c xformers/label/dev
Alternatively, you can build it from source:
# (Optional) Makes the build much faster
pip install ninja
# Set TORCH_CUDA_ARCH_LIST if running and building on different GPU types
pip install -v -U git+https://github.com/facebookresearch/xformers.git@main#egg=xformers
# (this can take dozens of minutes)
How does it work
what makes a transition a good transition?
- absence of movement
- every frame looks like a credible photo