Go to file
Sanster a2036c71a2 add example gif 2021-12-03 22:35:47 +08:00
assets add example gif 2021-12-03 22:35:47 +08:00
lama_cleaner remove map;build app 2021-11-30 13:24:53 +08:00
.gitignore init 2021-11-15 22:21:01 +08:00
Dockerfile Added Dockerfile 2021-11-15 20:11:46 +01:00
LICENSE init 2021-11-15 22:21:01 +08:00
README.md add example gif 2021-12-03 22:35:47 +08:00
main.py resize image using backend;add resize radio button 2021-11-30 13:24:52 +08:00
requirements.txt init 2021-11-15 22:21:01 +08:00
setup.py init 2021-11-15 22:21:01 +08:00

README.md

Lama-cleaner: Image inpainting tool powered by LaMa

This project is mainly used for selfhosting LaMa model, some interaction improvements may be added later.

example

Quick Start

  • Install requirements: pip3 install -r requirements.txt
  • Start server: python3 main.py --device=cuda --port=8080

Development

Fronted

Frontend code are modified from cleanup.pictures, You can experience their great online services here.

  • Install dependencies:cd lama_cleaner/app/ && yarn
  • Start development server: yarn dev
  • Build: yarn build

Docker

Run within a Docker container. Set the CACHE_DIR to models location path. Optionally add a -d option to the docker run command below to run as a daemon.

Build Docker image

docker build -f Dockerfile -t lamacleaner .

Run Docker (cpu)

docker run -p 8080:8080 -e CACHE_DIR=/app/models -v  $(pwd)/models:/app/models -v $(pwd):/app --rm lamacleaner python3 main.py --device=cpu --port=8080

Run Docker (gpu)

docker run --gpus all -p 8080:8080 -e CACHE_DIR=/app/models -v $(pwd)/models:/app/models -v $(pwd):/app --rm lamacleaner python3 main.py --device=cuda --port=8080

Then open http://localhost:8080