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diffusers/docs/source/en/using-diffusers/svd.md
Suraj Patil 63f767ef15 Add SVD (#5895)
* begin model

* finish blocks

* add_embedding

* addition_time_embed_dim

* use TimestepEmbedding

* fix temporal res block

* fix time_pos_embed

* fix add_embedding

* add conversion script

* fix model

* up

* add new resnet blocks

* make forward work

* return sample in original shape

* fix temb shape in TemporalResnetBlock

* add spatio temporal transformers

* add vae blocks

* fix blocks

* update

* update

* fix shapes in Alphablender and add time activation in res blcok

* use new blocks

* style

* fix temb shape

* fix SpatioTemporalResBlock

* reuse TemporalBasicTransformerBlock

* fix TemporalBasicTransformerBlock

* use TransformerSpatioTemporalModel

* fix TransformerSpatioTemporalModel

* fix time_context dim

* clean up

* make temb optional

* add blocks

* rename model

* update conversion script

* remove UNetMidBlockSpatioTemporal

* add in init

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* up

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* begin pipeline

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* add guidance scalings

* fix norm eps in temporal transformers

* add temporal autoencoder

* make pipeline run

* fix frame decodig

* decode in float32

* decode n frames at a time

* pass decoding_t to decode_latents

* fix decode_latents

* vae encode/decode in fp32

* fix dtype in TransformerSpatioTemporalModel

* type image_latents same as image_embeddings

* allow using differnt eps in temporal block for video decoder

* fix default values in vae

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* accept fps as arg

* add pipeline and vae in init

* remove hack

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* don't scale image latents

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* Update src/diffusers/pipelines/stable_diffusion_video/pipeline_stable_diffusion_video.py

Co-authored-by: Patrick von Platen <patrick.v.platen@gmail.com>

* style

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* Apply suggestions from code review

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* add diffusers example

* fix more

---------

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>
Co-authored-by: Patrick von Platen <patrick.v.platen@gmail.com>
Co-authored-by: apolinário <joaopaulo.passos@gmail.com>
2023-11-29 19:13:36 +01:00

6.1 KiB

Stable Video Diffusion

open-in-colab

Stable Video Diffusion is a powerful image-to-video generation model that can generate high resolution (576x1024) 2-4 second videos conditioned on the input image.

This guide will show you how to use SVD to short generate videos from images.

Before you begin, make sure you have the following libraries installed:

!pip install -q -U diffusers transformers accelerate 

Image to Video Generation

The are two variants of SVD. SVD and SVD-XT. The svd checkpoint is trained to generate 14 frames and the svd-xt checkpoint is further finetuned to generate 25 frames.

We will use the svd-xt checkpoint for this guide.

import torch

from diffusers import StableVideoDiffusionPipeline
from diffusers.utils import load_image, export_to_video

pipe = StableVideoDiffusionPipeline.from_pretrained(
    "stabilityai/stable-video-diffusion-img2vid-xt", torch_dtype=torch.float16, variant="fp16"
)
pipe.enable_model_cpu_offload()

# Load the conditioning image
image = load_image("https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/svd/rocket.png?download=true")
image = image.resize((1024, 576))

generator = torch.manual_seed(42)
frames = pipe(image, decode_chunk_size=8, generator=generator).frames[0]

export_to_video(frames, "generated.mp4", fps=7)
Since generating videos is more memory intensive we can use the `decode_chunk_size` argument to control how many frames are decoded at once. This will reduce the memory usage. It's recommended to tweak this value based on your GPU memory. Setting `decode_chunk_size=1` will decode one frame at a time and will use the least amount of memory but the video might have some flickering.

Additionally, we also use model cpu offloading to reduce the memory usage.

Torch.compile

You can achieve a 20-25% speed-up at the expense of slightly increased memory by compiling the UNet as follows:

- pipe.enable_model_cpu_offload()
+ pipe.to("cuda")
+ pipe.unet = torch.compile(pipe.unet, mode="reduce-overhead", fullgraph=True)

Low-memory

Video generation is very memory intensive as we have to essentially generate num_frames all at once. The mechanism is very comparable to text-to-image generation with a high batch size. To reduce the memory requirement you have multiple options. The following options trade inference speed against lower memory requirement:

  • enable model offloading: Each component of the pipeline is offloaded to CPU once it's not needed anymore.
  • enable feed-forward chunking: The feed-forward layer runs in a loop instead of running with a single huge feed-forward batch size
  • reduce decode_chunk_size: This means that the VAE decodes frames in chunks instead of decoding them all together. Note: In addition to leading to a small slowdown, this method also slightly leads to video quality deterioration

You can enable them as follows:

-pipe.enable_model_cpu_offload()
-frames = pipe(image, decode_chunk_size=8, generator=generator).frames[0]
+pipe.enable_model_cpu_offload()
+pipe.unet.enable_forward_chunking()
+frames = pipe(image, decode_chunk_size=2, generator=generator, num_frames=25).frames[0]

Including all these tricks should lower the memory requirement to less than 8GB VRAM.

Micro-conditioning

Along with conditioning image Stable Diffusion Video also allows providing micro-conditioning that allows more control over the generated video. It accepts the following arguments:

  • fps: The frames per second of the generated video.
  • motion_bucket_id: The motion bucket id to use for the generated video. This can be used to control the motion of the generated video. Increasing the motion bucket id will increase the motion of the generated video.
  • noise_aug_strength: The amount of noise added to the conditioning image. The higher the values the less the video will resemble the conditioning image. Increasing this value will also increase the motion of the generated video.

Here is an example of using micro-conditioning to generate a video with more motion.

import torch

from diffusers import StableVideoDiffusionPipeline
from diffusers.utils import load_image, export_to_video

pipe = StableVideoDiffusionPipeline.from_pretrained(
    "stabilityai/stable-video-diffusion-img2vid-xt", torch_dtype=torch.float16, variant="fp16"
)
pipe.enable_model_cpu_offload()

# Load the conditioning image
image = load_image("https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/svd/rocket.png?download=true")
image = image.resize((1024, 576))

generator = torch.manual_seed(42)
frames = pipe(image, decode_chunk_size=8, generator=generator, motion_bucket_id=180, noise_aug_strength=0.1).frames[0]
export_to_video(frames, "generated.mp4", fps=7)