rembg is a python library which utilizes Neural Network AI models and ONNX to remove the backgrounds from supplied image files. Can be used as a library or a CLI tool.

#image-processing #background-removal #python #library #ai #neuralnet #machine-learning #ml

Daniel Gatis 9d5f63d25f fix linters 7 hónapja
.github 48acb2d970 Merge pull request #692 from danielgatis/python13 7 hónapja
examples 47701001ab fix sam session (#531) 1 éve
rembg 9d5f63d25f fix linters 7 hónapja
tests d4c40e1c3e Add BiRefNet-General and BiRefNet-Portrait models as available models (#665) 1 éve
.dockerignore d98520ef02 add compose file (#612) 1 éve
.editorconfig 7fb6683169 initial 5 éve
.gitattributes fe0823e513 fix build 3 éve
.gitignore ed1c29576f chore: Update .gitignore and add .python-version file 1 éve
.markdownlint.yaml 2e23bab4fa format md (#611) 1 éve
.python-version ed1c29576f chore: Update .gitignore and add .python-version file 1 éve
Dockerfile 8a5d7d5a6d add curl to Docker image 7 hónapja
LICENSE.txt 7fb6683169 initial 5 éve
MANIFEST.in e7a8a209db add tests 3 éve
README.md 48acb2d970 Merge pull request #692 from danielgatis/python13 7 hónapja
USAGE.md 2e23bab4fa format md (#611) 1 éve
_build-exe.ps1 0dcdb080ae test github action windows installer 1 éve
_modpath.iss 0dcdb080ae test github action windows installer 1 éve
_setup.iss 0dcdb080ae test github action windows installer 1 éve
docker-compose.yml d98520ef02 add compose file (#612) 1 éve
onnxruntime-installation-matrix.png 1586c1d5d6 update readme 2 éve
pyproject.toml e7884e2aaf Require younger setuptools 2 éve
pytest.ini e7a8a209db add tests 3 éve
rembg.py 2473aa72b9 fix version 3 éve
rembg.spec 0dcdb080ae test github action windows installer 1 éve
setup.cfg fe0823e513 fix build 3 éve
setup.py 35544226cc add python 3.13 support 9 hónapja
versioneer.py eba6b2dbf3 fix project layout 3 éve

README.md

Rembg

OPEN TO WORK

Hello everyone!

I’m currently looking for new remote job opportunities and would greatly appreciate your support. If you come across any openings or opportunities that might be a good fit, please don’t hesitate to share them with me.

Thank you so much for your help—it means a lot!

Feel free to reach out to me via email: [email protected]


Downloads License Hugging Face Spaces Streamlit App

Rembg is a tool to remove images background.

example car-1 example car-1.out example car-2 example car-2.out example car-3 example car-3.out

example animal-1 example animal-1.out example animal-2 example animal-2.out example animal-3 example animal-3.out

example girl-1 example girl-1.out example girl-2 example girl-2.out example girl-3 example girl-3.out

example anime-girl-1 example anime-girl-1.out example anime-girl-2 example anime-girl-2.out example anime-girl-3 example anime-girl-3.out

If this project has helped you, please consider making a donation.

Sponsor

Unsplash PhotoRoom Remove Background API
https://photoroom.com/api

Fast and accurate background remover API

Requirements

python: >=3.10, <3.14

Installation

If you have onnxruntime already installed, just install rembg:

pip install rembg # for library
pip install "rembg[cli]" # for library + cli

Otherwise, install rembg with explicit CPU/GPU support.

CPU support:

pip install rembg[cpu] # for library
pip install "rembg[cpu,cli]" # for library + cli

GPU support:

First of all, you need to check if your system supports the onnxruntime-gpu.

Go to https://onnxruntime.ai and check the installation matrix.

onnxruntime-installation-matrix

If yes, just run:

pip install "rembg[gpu]" # for library
pip install "rembg[gpu,cli]" # for library + cli

Usage as a cli

After the installation step you can use rembg just typing rembg in your terminal window.

The rembg command has 4 subcommands, one for each input type:

  • i for files
  • p for folders
  • s for http server
  • b for RGB24 pixel binary stream

You can get help about the main command using:

rembg --help

As well, about all the subcommands using:

rembg <COMMAND> --help

rembg i

Used when input and output are files.

Remove the background from a remote image

curl -s http://input.png | rembg i > output.png

Remove the background from a local file

rembg i path/to/input.png path/to/output.png

Remove the background specifying a model

rembg i -m u2netp path/to/input.png path/to/output.png

Remove the background returning only the mask

rembg i -om path/to/input.png path/to/output.png

Remove the background applying an alpha matting

rembg i -a path/to/input.png path/to/output.png

Passing extras parameters

SAM example

rembg i -m sam -x '{ "sam_prompt": [{"type": "point", "data": [724, 740], "label": 1}] }' examples/plants-1.jpg examples/plants-1.out.png
Custom model example

rembg i -m u2net_custom -x '{"model_path": "~/.u2net/u2net.onnx"}' path/to/input.png path/to/output.png

rembg p

Used when input and output are folders.

Remove the background from all images in a folder

rembg p path/to/input path/to/output

Same as before, but watching for new/changed files to process

rembg p -w path/to/input path/to/output

rembg s

Used to start http server.

rembg s --host 0.0.0.0 --port 7000 --log_level info

To see the complete endpoints documentation, go to: http://localhost:7000/api.

Remove the background from an image url

curl -s "http://localhost:7000/api/remove?url=http://input.png" -o output.png

Remove the background from an uploaded image

curl -s -F file=@/path/to/input.jpg "http://localhost:7000/api/remove"  -o output.png

rembg b

Process a sequence of RGB24 images from stdin. This is intended to be used with another program, such as FFMPEG, that outputs RGB24 pixel data to stdout, which is piped into the stdin of this program, although nothing prevents you from manually typing in images at stdin.

rembg b image_width image_height -o output_specifier

Arguments:

  • image_width : width of input image(s)
  • image_height : height of input image(s)
  • output_specifier: printf-style specifier for output filenames, for example if output-%03u.png, then output files will be named output-000.png, output-001.png, output-002.png, etc. Output files will be saved in PNG format regardless of the extension specified. You can omit it to write results to stdout.

Example usage with FFMPEG:

ffmpeg -i input.mp4 -ss 10 -an -f rawvideo -pix_fmt rgb24 pipe:1 | rembg b 1280 720 -o folder/output-%03u.png

The width and height values must match the dimension of output images from FFMPEG. Note for FFMPEG, the "-an -f rawvideo -pix_fmt rgb24 pipe:1" part is required for the whole thing to work.

Usage as a library

Input and output as bytes

from rembg import remove

input_path = 'input.png'
output_path = 'output.png'

with open(input_path, 'rb') as i:
    with open(output_path, 'wb') as o:
        input = i.read()
        output = remove(input)
        o.write(output)

Input and output as a PIL image

from rembg import remove
from PIL import Image

input_path = 'input.png'
output_path = 'output.png'

input = Image.open(input_path)
output = remove(input)
output.save(output_path)

Input and output as a numpy array

from rembg import remove
import cv2

input_path = 'input.png'
output_path = 'output.png'

input = cv2.imread(input_path)
output = remove(input)
cv2.imwrite(output_path, output)

Force output as bytes

from rembg import remove

input_path = 'input.png'
output_path = 'output.png'

with open(input_path, 'rb') as i:
    with open(output_path, 'wb') as o:
        input = i.read()
        output = remove(input, force_return_bytes=True)
        o.write(output)

How to iterate over files in a performatic way

from pathlib import Path
from rembg import remove, new_session

session = new_session()

for file in Path('path/to/folder').glob('*.png'):
    input_path = str(file)
    output_path = str(file.parent / (file.stem + ".out.png"))

    with open(input_path, 'rb') as i:
        with open(output_path, 'wb') as o:
            input = i.read()
            output = remove(input, session=session)
            o.write(output)

To see a full list of examples on how to use rembg, go to the examples page.

Usage as a docker

Just replace the rembg command for docker run danielgatis/rembg.

Try this:

docker run -v path/to/input:/rembg danielgatis/rembg i input.png path/to/output/output.png

Models

All models are downloaded and saved in the user home folder in the .u2net directory.

The available models are:

  • u2net (download, source): A pre-trained model for general use cases.
  • u2netp (download, source): A lightweight version of u2net model.
  • u2net_human_seg (download, source): A pre-trained model for human segmentation.
  • u2net_cloth_seg (download, source): A pre-trained model for Cloths Parsing from human portrait. Here clothes are parsed into 3 category: Upper body, Lower body and Full body.
  • silueta (download, source): Same as u2net but the size is reduced to 43Mb.
  • isnet-general-use (download, source): A new pre-trained model for general use cases.
  • isnet-anime (download, source): A high-accuracy segmentation for anime character.
  • sam (download encoder, download decoder, source): A pre-trained model for any use cases.
  • birefnet-general (download, source): A pre-trained model for general use cases.
  • birefnet-general-lite (download, source): A light pre-trained model for general use cases.
  • birefnet-portrait (download, source): A pre-trained model for human portraits.
  • birefnet-dis (download, source): A pre-trained model for dichotomous image segmentation (DIS).
  • birefnet-hrsod (download, source): A pre-trained model for high-resolution salient object detection (HRSOD).
  • birefnet-cod (download, source): A pre-trained model for concealed object detection (COD).
  • birefnet-massive (download, source): A pre-trained model with massive dataset.

How to train your own model

If You need more fine tuned models try this: https://github.com/danielgatis/rembg/issues/193#issuecomment-1055534289

Some video tutorials

References

FAQ

When will this library provide support for Python version 3.xx?

This library directly depends on the onnxruntime library. Therefore, we can only update the Python version when onnxruntime provides support for that specific version.

Buy me a coffee

Liked some of my work? Buy me a coffee (or more likely a beer)

Buy Me A Coffee

Star History

Star History Chart

License

Copyright (c) 2020-present Daniel Gatis

Licensed under MIT License