blanchon's picture
Update code
76c1d81
raw
history blame contribute delete
No virus
22.6 kB
import os
from pathlib import Path
import shutil
import tempfile
from typing import List
import gradio as gr
import uuid
from typing_extensions import TypedDict, Tuple
from fastapi import FastAPI
app = FastAPI()
# create a static directory to store the static files
GS_DIR = Path(str(tempfile.gettempdir())) / "gaussian_splatting_gradio"
GS_DIR.mkdir(parents=True, exist_ok=True)
StateDict = TypedDict("StateDict", {
"uuid": str,
})
# http://localhost:7860/file=/tmp/gradio/c2110a7de804b39754d229de426dc9307bc03aea/page.svelte
HOST = "localhost"
PORT = 7860
home_markdown = """
...
"""
step1_markdown = """
# Step 1 - Split Video into Frames
In the journey of transforming a video into a 3D Gaussian Splatting, the initial step is the conversion of the video into individual frames. You can here provide a **video file** and specify how much image you want to extract per second (*fps*). The application will then automatically extract the frames from the video and prepare them for the next step in the process.
However, you can also do this step manually and upload the frames directory by yourself in the next step. In this case, you can skip this step and go directly to the next step.
Please not that blurry frames will mostlikely result in a bad 3D model. So, make sure that the video is clear enough.
"""
step2_markdown = """
# Step 2 - SfM using Colmap
In this step we use Colmap (https://github.com/colmap/colmap). This process utilizes the frames extracted from the uploaded video to generate camera parameters and a point cloud, which are essential components for the 3D Gaussian Splatting process.
This step could take a while depending on the number of frames and the resolution. So, please be patient.
You might want to do this step manually and upload the frames directory by yourself in the next step. In this case, you can skip this step and go directly to the next step.
"""
step3_markdown = """
# Step 3 - 3D Gaussian Splatting
In this final step we use the 3D Gaussian Splatting Cuda implementation by MrNeRF (https://twitter.com/janusch_patas): https://github.com/MrNeRF/gaussian-splatting-cuda.
As it's quite rapid to train, you can easily use a high number of iterations.
"""
def getPlyFile(session_state_value: StateDict) -> str:
return f"/tmp/gaussian_splatting_gradio/{session_state_value['uuid']}/output/final_point_cloud.ply"
def getCamerasFile(session_state_value: StateDict) -> str:
return f"/tmp/gaussian_splatting_gradio/{session_state_value['uuid']}/output/cameras.json"
def getZipFile(session_state_value: StateDict) -> str:
return f"/tmp/gaussian_splatting_gradio/{session_state_value['uuid']}/result.zip"
def makeResult(session_state_value: StateDict) -> tuple[str, str, str]:
ply_file = getPlyFile(session_state_value)
cameras_file = getCamerasFile(session_state_value)
zip_file = getZipFile(session_state_value)
return [ply_file, cameras_file, zip_file]
# Utility functions
def createStateSession(previous_session: StateDict) -> StateDict:
if previous_session["uuid"] is None:
# Create new session
session_uuid = str(uuid.uuid4())
print("Creating new session: ", session_uuid)
session_tmpdirname = GS_DIR / str(session_uuid)
session_tmpdirname.mkdir(parents=True, exist_ok=True)
print('Created temporary directory: ', session_tmpdirname)
session = StateDict(
uuid=session_uuid,
)
else:
# Use previous session
session = previous_session
return session
def removeStateSession(session_state_value: StateDict):
# Clean up previous session
session_uuid = session_state_value["uuid"]
session_tmpdirname = GS_DIR / str(session_uuid)
print('Removing temporary directory: ', session_tmpdirname)
shutil.rmtree(session_tmpdirname)
return StateDict(
uuid=None,
)
def makeButtonVisible(btn_value: str) -> gr.Button:
return gr.Button(btn_value, visible=True)
# Process functions
def process_ffmpeg(
session_state_value: StateDict,
ffmpeg_input: str,
ffmpeg_fps: int,
ffmpeg_qscale: int,
) -> list[str]:
# Ensure that a session is active
if session_state_value["uuid"] is None:
return
# Set up session directory
session_path = GS_DIR / str(session_state_value['uuid'])
logfile_path = Path(session_path) / "ffmpeg_log.txt"
logfile_path.touch()
try:
from services.ffmpeg import ffmpeg_run
with logfile_path.open("w") as log_file:
ffmpeg_run(
video_path = Path(ffmpeg_input),
output_path = session_path,
fps = int(ffmpeg_fps),
qscale = int(ffmpeg_qscale),
stream_file=log_file
)
print("Done with ffmpeg")
except Exception as e:
print(f"Error - {e}")
# print('Error - Removing temporary directory', session_path)
# shutil.rmtree(session_path)
# Get the list of all the file of (session_path / "input")
list_of_jpgs = [str(f) for f in (session_path / "input").glob("*.jpg")]
return list_of_jpgs
def processColmap(
session_state_value: StateDict,
colmap_inputs: List[tempfile.NamedTemporaryFile],
colmap_camera: str,
enable_rerun: bool
) -> Tuple[str, str]:
# Ensure that a session is active
if session_state_value["uuid"] is None:
return "", ""
# Set up session directory
session_path = GS_DIR / str(session_state_value['uuid'])
logfile_path = Path(session_path) / "colmap_log.txt"
logfile_path.touch()
rerunfile_path = Path(session_path) / "rerun_page.html"
rerunfile_path.touch()
(session_path / "input").mkdir(parents=True, exist_ok=True)
for file in colmap_inputs:
print("copying", file.name, "to", session_path / "input")
shutil.copy(file.name, session_path / "input")
try:
from services.colmap import colmap
with logfile_path.open("w") as log_file:
colmap(
source_path=session_path,
camera=str(colmap_camera),
stream_file=log_file
)
print("Done with colmap")
if enable_rerun:
from services.rerun import read_and_log_sparse_reconstruction
html = read_and_log_sparse_reconstruction(
exp_name = str(session_state_value['uuid']),
dataset_path = session_path,
)
print("Done with rerun")
else:
html = "Rerun was disable !"
with rerunfile_path.open("w") as rerunfile:
rerunfile.write(html)
except Exception as e:
print(f"Error - {e}")
# print('Error - Removing temporary directory', session_path)
# shutil.rmtree(session_path)
# zip the session_path folder
archive = shutil.make_archive("result", 'zip', GS_DIR, session_path)
print('Created zip file', archive)
return archive, rerunfile_path
def processGaussianSplattingCuda(
session_state_value: StateDict,
gs_input: tempfile.NamedTemporaryFile,
gs_iterations: int,
gs_convergence_rate: float,
gs_resolution: int,
) -> Tuple[str, str]:
# Ensure that a session is active
if session_state_value["uuid"] is None:
return
# Set up session directory
session_path = GS_DIR / str(session_state_value['uuid'])
logfile_path = Path(session_path) / "gaussian_splatting_cuda_log.txt"
logfile_path.touch()
# Unzip the gs_input file to the session_path
shutil.unpack_archive(gs_input.name, session_path)
# Copy the gs_input directory to the session_path
# shutil.copytree(gs_input, session_path)
try:
from services.gaussian_splatting_cuda import gaussian_splatting_cuda
with logfile_path.open("w") as log_file:
gaussian_splatting_cuda(
data_path = session_path,
output_path = session_path / "output",
gs_command = str(Path(__file__).parent.absolute() / "build" / 'gaussian_splatting_cuda'),
iterations = int(gs_iterations),
convergence_rate = float(gs_convergence_rate),
resolution = int(gs_resolution),
enable_cr_monitoring = False,
force = False,
empty_gpu_cache = False,
stream_file = log_file
)
print("Done with gaussian_splatting_cuda")
# Create a zip of the session_path folder
archive = shutil.make_archive("result", 'zip', GS_DIR, session_path)
print('Created zip file', archive)
# Move the zip file to the session_path folder
shutil.move(archive, session_path)
except Exception as e:
print(f"Error - {e}")
# print('Error - Removing temporary directory', session_path)
# shutil.rmtree(session_path)
return (
session_path / "output" / "final_point_cloud.ply",
session_path / "output" / "cameras.json",
)
def updateLog(logname:str, session_state_value: StateDict) -> str:
if session_state_value["uuid"] is None:
return ""
log_file = GS_DIR / str(session_state_value['uuid']) / f"{logname}.txt"
if not log_file.exists():
return ""
with log_file.open("r") as log_file:
logs = log_file.read()
return logs
def bindStep1Step2(step1_output: list[tempfile.NamedTemporaryFile]) -> list[str]:
return [file.name for file in step1_output]
def bindStep2Step3(step2_output: tempfile.NamedTemporaryFile) -> str:
return step2_output.name
def makeRerunIframe(rerun_html : tempfile.NamedTemporaryFile) -> str:
# If rerun_html is bigger than 300MB, then we don't show it
print(f"Rerun file size: {os.stat(rerun_html.name).st_size}")
if os.stat(rerun_html.name).st_size > 100_000_000:
print("Rerun file is too big, not showing it")
return ""
filepath = rerun_html.name
print("filepath", filepath)
return f"""<iframe src="/file={filepath}" width="100%"; height="1080px"></iframe>"""
with gr.Blocks() as demo:
#############################
########## State ############
#############################
session_state = gr.State({
"uuid": None,
})
#############################
###### UI Components ########
#############################
gr.Markdown("# Gaussian Splatting Kit")
gr.Markdown("Click on the **Duplicate** button to create a new instance of this app.")
duplicate_button = gr.DuplicateButton()
gr.Markdown(value=home_markdown)
with gr.Tab("Slit Video into Frames"):
step1_description = gr.Markdown(step1_markdown)
# Video Frames
with gr.Row():
# Video Frames - Inputs
with gr.Column():
# Video Frames - Inputs - Video File
step1_input = gr.PlayableVideo(
format="mp4",
source="upload",
label="Upload a video",
include_audio=False
)
# Video Frames - Inputs - Parameters
with gr.Row(variant="panel"):
# Video Frames - Inputs - Parameters - FFMPEG FPS
step1_fps = gr.Number(
label="FFMPEG Fps",
value=1,
minimum=1,
maximum=5,
step=0.10,
)
# Video Frames - Inputs - Parameters - FFMPEG Qscale
step1_qscale = gr.Number(
label="FFMPEG Qscale",
value=1,
minimum=1,
maximum=5,
step=1,
)
# Video Frames - Outputs
with gr.Column():
# Video Frames - Outputs - Video File
step1_output = gr.File(
label="Frames",
file_count="directory",
type="file",
interactive=False,
)
# Video Frames - Outputs - Logs
step1_logs = gr.Textbox(
label="Videos Logs",
interactive=False,
show_copy_button=True
)
# Video Frames - Process Button
step1_processbtn = gr.Button("Process", visible=True)
# Video Frames - Visualize
# Video Frames - Visualize -
# step1_visualize_gallery = gr.Gallery()
with gr.Tab("Colmap"):
step2_description = gr.Markdown(step2_markdown)
# Colmap
with gr.Row():
# Colmap - Inputs
with gr.Column():
# Colmap - Inputs - Frames Directory
step2_input = gr.File(
label="Upload a frames directory",
file_count="directory",
type="file",
interactive=True,
)
# Colmap - Inputs - Parameters
with gr.Row(variant="panel"):
# Colmap - Inputs - Parameters - Colmap Camera
step2_camera = gr.Dropdown(
label="COLMAP Camera",
value="OPENCV",
choices=["OPENCV", "SIMPLE_PINHOLE", "PINHOLE", "SIMPLE_RADIAL", "RADIAL"],
)
# Colmap - Inputs - Parameters - Enable Rerun
step2_rerun = gr.Checkbox(
value=True,
label="Enable Rerun",
)
# Colmap - Outputs
with gr.Column():
# Colmap - Outputs - Video File
step2_output = gr.File(
label="Colmap",
file_count="single",
file_types=[".zip"],
type="file",
interactive=False,
)
# Colmap - Outputs - Logs
step2_logs = gr.Textbox(
label="Colmap Logs",
interactive=False,
show_copy_button=True
)
# Colmap - Process Button
step2_processbtn = gr.Button("Process", visible=True)
# Colmap - Visualize
# Colmap - Visualize - Rerun HTML File
step_2_visualize_html = gr.File(
label="Rerun HTML",
file_count="single",
file_types=[".html"],
type="file",
interactive=False,
visible=False
)
# Colmap - Visualize - Rerun HTML
step_2_visualize = gr.HTML("Rerun", visible=True)
with gr.Tab("Gaussian Splatting"):
step3_description = gr.Markdown(step3_markdown)
# Gaussian Splatting
with gr.Row():
# Gaussian Splatting - Inputs
with gr.Column():
# Gaussian Splatting - Inputs - Colmap + Frames
step3_input = gr.File(
label="Upload a colmap + frames directory",
file_count="single",
file_types=[".zip"],
type="file",
interactive=True,
)
# Gaussian Splatting - Inputs - Parameters
with gr.Row(variant="panel"):
# Gaussian Splatting - Inputs - Parameters - GS Iterations
step3_iterations = gr.Number(
label="GS Iterations",
value=10_000,
minimum=1_000,
maximum=50_000,
step=1_000,
)
# Gaussian Splatting - Inputs - Parameters - GS Convergence Rate
step3_convergence_rate = gr.Number(
label="GS Convergence Rate",
value=0.01,
minimum=0.01,
maximum=1,
step=0.01,
)
# Gaussian Splatting - Inputs - Parameters - GS Resolution
step3_resolution = gr.Number(
label="GS Resolution",
value=512,
minimum=128,
maximum=1024,
step=128,
)
# Gaussian Splatting - Outputs
with gr.Column():
with gr.Row():
# Gaussian Splatting - Outputs - PLY File
step3_output1 = gr.File(
label="PLY File",
file_count="single",
type="file",
interactive=False,
)
# Gaussian Splatting - Outputs - Cameras File
step3_output2 = gr.File(
label="Cameras File",
file_count="single",
type="file",
interactive=False,
)
# Gaussian Splatting - Outputs - Logs
step3_logs = gr.Textbox(
label="Gaussian Splatting Logs",
interactive=False,
show_copy_button=True
)
# Gaussian Splatting - Process Button
step3_processbtn = gr.Button("Process", visible=True)
# Gaussian Splatting - Visualize
# Gaussian Splatting - Visualize - Antimatter15 HTML
# step_3_visualize = gr.HTML(getAntimatter15HTML(), visible=True)
step_3_visualize = gr.Button("Visualize", visible=True, link="https://antimatter15.com/splat/")
#############################
########## Events ###########
#############################
### Step 1
# Make the process button visible when a video is uploaded
step1_upload_event = step1_input.upload(
fn=createStateSession,
inputs=[session_state],
outputs=[session_state]
).success(
fn=makeButtonVisible,
inputs=[step1_processbtn],
outputs=[step1_processbtn],
)
# Do the processing when the process button is clicked
step1_processevent = step1_processbtn.click(
fn=process_ffmpeg,
inputs=[session_state, step1_input, step1_fps, step1_qscale],
outputs=[step1_output],
).success(
fn=bindStep1Step2,
inputs=[step1_output],
outputs=[step2_input],
).success(
fn=makeButtonVisible,
inputs=[step2_processbtn],
outputs=[step2_processbtn],
)
# Update the logs every 2 seconds
step1_logsevent = step1_processbtn.click(
fn=lambda session: updateLog("ffmpeg_log", session),
inputs=[session_state],
outputs=[step1_logs],
every=2,
)
## Step 2
# Make the process button visible when a video is uploaded
step2_upload_event = step2_input.upload(
fn=createStateSession,
inputs=[session_state],
outputs=[session_state]
).success(
fn=makeButtonVisible,
inputs=[step2_processbtn],
outputs=[step2_processbtn],
)
# Do the processing when the process button is clicked
step2_processevent = step2_processbtn.click(
fn=processColmap,
inputs=[session_state, step2_input, step2_camera, step2_rerun],
outputs=[step2_output, step_2_visualize_html]
).success(
fn=bindStep2Step3,
inputs=[step2_output],
outputs=[step3_input],
).success(
fn=makeButtonVisible,
inputs=[step3_processbtn],
outputs=[step3_processbtn],
).then(
fn=makeRerunIframe,
inputs=[step_2_visualize_html],
outputs=[step_2_visualize],
)
# Update the logs every 2 seconds
step2_logsevent = step2_processbtn.click(
fn=lambda session: updateLog("colmap_log", session),
inputs=[session_state],
outputs=[step2_logs],
every=2,
)
## Step 3
# Make the process button visible when a video is uploaded
step3_upload_event = step3_input.upload(
fn=createStateSession,
inputs=[session_state],
outputs=[session_state]
).success(
fn=makeButtonVisible,
inputs=[step3_processbtn],
outputs=[step3_processbtn],
)
# Do the processing when the process button is clicked
step3_processevent = step3_processbtn.click(
fn=processGaussianSplattingCuda,
inputs=[session_state, step3_input, step3_iterations, step3_convergence_rate, step3_resolution],
outputs=[step3_output1, step3_output2]
)
# .success(
# fn=lambda x: x,
# inputs=[step3_output1, step3_output2],
# outputs=[],
# )
# Update the logs every 2 seconds
step3_logsevent = step3_processbtn.click(
fn=lambda session: updateLog("gaussian_splatting_cuda_log", session),
inputs=[session_state],
outputs=[step3_logs],
every=2,
)
# reset_button = gr.ClearButton(
# components=[video_input, text_log, ffmpeg_fps, ffmpeg_qscale, colmap_camera],
# label="Reset",
# visible=False,
# )
# print(f"async (x) => {{ {getJS(url='http://0.0.0.0:7860/output/37c7ae54-7752-4e7b-8ba9-bab32c86b316/output/point_cloud/iteration_100/point_cloud.ply')} }}")
# show_button.click(
# fn=None,
# inputs=[],
# outputs=[],
# _js=f"async (x) => {{ {getJS(url='http://0.0.0.0:7860/output/37c7ae54-7752-4e7b-8ba9-bab32c86b316/output/point_cloud/iteration_100/point_cloud.ply')} }}"
# ).then(
# fn=None,
# inputs=[],
# outputs=[],
# _js=f"async (x) => {{ {getJS(url='http://0.0.0.0:7860/output/37c7ae54-7752-4e7b-8ba9-bab32c86b316/output/point_cloud/iteration_100/point_cloud.ply')} }}"
# )
# gr.LoginButton, gr.LogoutButton
# gr.HuggingFaceDatasetSaver
# gr.OAuthProfile
# with gr.Tab("jsdn"):
# input_mic = gr.HTML(getRerunHTML())
demo.queue()
demo.launch()
# mount Gradio app to FastAPI app
# app = gr.mount_gradio_app(app, demo, path="/")
# if __name__ == "__main__":
# uvicorn.run(app, host="0.0.0.0", port=7860, ws_max_size=16777216*1000)