dreamgaussian4d / app.py
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import gradio as gr
import os
from PIL import Image
import subprocess
from gradio_model4dgs import Model4DGS
import numpy
import hashlib
import shlex
import spaces
subprocess.run(shlex.split("pip install wheels/diff_gaussian_rasterization-0.0.0-cp310-cp310-linux_x86_64.whl"))
# subprocess.run(shlex.split("pip install xformers==0.0.23 --no-deps --index-url https://download.pytorch.org/whl/cu118"))
from huggingface_hub import hf_hub_download
ckpt_path = hf_hub_download(repo_id="ashawkey/LGM", filename="model_fp16_fixrot.safetensors")
js_func = """
function refresh() {
const url = new URL(window.location);
if (url.searchParams.get('__theme') !== 'light') {
url.searchParams.set('__theme', 'light');
window.location.href = url.href;
}
}
"""
# check if there is a picture uploaded or selected
def check_img_input(control_image):
if control_image is None:
raise gr.Error("Please select or upload an input image")
# check if there is a picture uploaded or selected
def check_video_input(image_block: Image.Image):
img_hash = hashlib.sha256(image_block.tobytes()).hexdigest()
if not os.path.exists(os.path.join('tmp_data', f'{img_hash}_rgba_generated.mp4')):
raise gr.Error("Please generate a video first")
@spaces.GPU
def optimize_stage_1(image_block: Image.Image, preprocess_chk: bool, seed_slider: int):
if not os.path.exists('tmp_data'):
os.makedirs('tmp_data')
img_hash = hashlib.sha256(image_block.tobytes()).hexdigest()
if preprocess_chk:
# save image to a designated path
image_block.save(os.path.join('tmp_data', f'{img_hash}.png'))
# preprocess image
print(f'python scripts/process.py {os.path.join("tmp_data", f"{img_hash}.png")}')
subprocess.run(f'python scripts/process.py {os.path.join("tmp_data", f"{img_hash}.png")}', shell=True)
else:
image_block.save(os.path.join('tmp_data', f'{img_hash}_rgba.png'))
# stage 1
subprocess.run(f'export MKL_THREADING_LAYER=GNU;export MKL_SERVICE_FORCE_INTEL=1;python scripts/gen_vid.py --path tmp_data/{img_hash}_rgba.png --seed {seed_slider} --bg white', shell=True)
# return [os.path.join('logs', 'tmp_rgba_model.ply')]
return os.path.join('tmp_data', f'{img_hash}_rgba_generated.mp4')
@spaces.GPU
def optimize_stage_2(image_block: Image.Image, seed_slider: int):
img_hash = hashlib.sha256(image_block.tobytes()).hexdigest()
subprocess.run(f'python lgm/infer.py big --resume {ckpt_path} --test_path tmp_data/{img_hash}_rgba.png', shell=True)
# stage 2
subprocess.run(f'python main_4d.py --config {os.path.join("configs", "4d_demo.yaml")} input={os.path.join("tmp_data", f"{img_hash}_rgba.png")}', shell=True)
# os.rename(os.path.join('logs', f'{img_hash}_rgba_frames'), os.path.join('logs', f'{img_hash}_{seed_slider:03d}_rgba_frames'))
image_dir = os.path.join('logs', f'{img_hash}_rgba_frames')
# return 'vis_data/tmp_rgba.mp4', [os.path.join(image_dir, file) for file in os.listdir(image_dir) if file.endswith('.ply')]
return [image_dir+f'/{t:03d}.ply' for t in range(28)]
if __name__ == "__main__":
_TITLE = '''DreamGaussian4D: Generative 4D Gaussian Splatting'''
_DESCRIPTION = '''
<div>
<a style="display:inline-block" href="https://jiawei-ren.github.io/projects/dreamgaussian4d/"><img src='https://img.shields.io/badge/public_website-8A2BE2'></a>
<a style="display:inline-block; margin-left: .5em" href="https://arxiv.org/abs/2312.17142"><img src="https://img.shields.io/badge/2312.17142-f9f7f7?logo=data:image/png;base64,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"></a>
<a style="display:inline-block; margin-left: .5em" href='https://github.com/jiawei-ren/dreamgaussian4d'><img src='https://img.shields.io/github/stars/jiawei-ren/dreamgaussian4d?style=social'/></a>
</div>
We present DreamGausssion4D, an efficient 4D generation framework that builds on Gaussian Splatting.
'''
_IMG_USER_GUIDE = "Please upload an image in the block above (or choose an example above), select a random seed, and click **Generate Video**. After having the video generated, please click **Generate 4D**."
# load images in 'data' folder as examples
example_folder = os.path.join(os.path.dirname(__file__), 'data')
example_fns = os.listdir(example_folder)
example_fns.sort()
examples_full = [os.path.join(example_folder, x) for x in example_fns if x.endswith('.png')]
# Compose demo layout & data flow
with gr.Blocks(title=_TITLE, theme=gr.themes.Soft(), js=js_func) as demo:
with gr.Row():
with gr.Column(scale=1):
gr.Markdown('# ' + _TITLE)
gr.Markdown(_DESCRIPTION)
# Image-to-3D
with gr.Row(variant='panel'):
with gr.Column(scale=4):
image_block = gr.Image(type='pil', image_mode='RGBA', height=290, label='Input image')
# elevation_slider = gr.Slider(-90, 90, value=0, step=1, label='Estimated elevation angle')
seed_slider = gr.Slider(0, 100000, value=0, step=1, label='Random Seed')
gr.Markdown(
"random seed for video generation.")
preprocess_chk = gr.Checkbox(True,
label='Preprocess image automatically (remove background and recenter object)')
gr.Examples(
examples=examples_full, # NOTE: elements must match inputs list!
inputs=[image_block],
outputs=[image_block],
cache_examples=False,
label='Examples (click one of the images below to start)',
examples_per_page=40
)
img_run_btn = gr.Button("Generate Video")
fourd_run_btn = gr.Button("Generate 4D")
img_guide_text = gr.Markdown(_IMG_USER_GUIDE, visible=True)
with gr.Column(scale=5):
obj3d = gr.Video(label="video",height=290)
obj4d = Model4DGS(label="4D Model", height=500, fps=14)
img_run_btn.click(check_img_input, inputs=[image_block], queue=False).success(optimize_stage_1,
inputs=[image_block,
preprocess_chk,
seed_slider],
outputs=[
obj3d])
fourd_run_btn.click(check_video_input, inputs=[image_block], queue=False).success(optimize_stage_2, inputs=[image_block, seed_slider], outputs=[obj4d])
# demo.queue().launch(share=True)
demo.queue(max_size=10) # <-- Sets up a queue with default parameters
demo.launch()