The kornia
crate is a low level library for Computer Vision written in Rust π¦
Use the library to perform image I/O, visualisation and other low level operations in your machine learning and data-science projects in a thread-safe and efficient way.
cargo run --bin hello_world -- --image-path path/to/image.jpg
use kornia::image::Image;
use kornia::io::functional as F;
fn main() -> Result<(), Box<dyn std::error::Error>> {
// read the image
let image: Image<u8, 3> = F::read_image_any("tests/data/dog.jpeg")?;
println!("Hello, world! π¦");
println!("Loaded Image size: {:?}", image.size());
println!("\nGoodbyte!");
Ok(())
}
Hello, world! π¦
Loaded Image size: ImageSize { width: 258, height: 195 }
Goodbyte!
- π¦The library is primarly written in Rust.
- π Multi-threaded and efficient image I/O, image processing and advanced computer vision operators.
- π’ Efficient Tensor and Image API for deep learning and scientific computing.
- π Python bindings are created with PyO3/Maturin.
- π¦ We package with support for Linux [amd64/arm64], Macos and WIndows.
- Supported Python versions are 3.7/3.8/3.9/3.10/3.11/3.12/3.13
- Read images from AVIF, BMP, DDS, Farbeld, GIF, HDR, ICO, JPEG (libjpeg-turbo), OpenEXR, PNG, PNM, TGA, TIFF, WebP.
- Convert images to grayscale, resize, crop, rotate, flip, pad, normalize, denormalize, and other image processing operations.
- Capture video frames from a camera and video writers.
Dependeing on the features you want to use, you might need to install the following dependencies in your system:
sudo apt-get install nasm
sudo apt-get install libgstreamer1.0-dev libgstreamer-plugins-base1.0-dev
** Check the gstreamr installation guide: https://docs.rs/gstreamer/latest/gstreamer/#installation
Add the following to your Cargo.toml
:
[dependencies]
kornia = "v0.1.7"
Alternatively, you can use each sub-crate separately:
[dependencies]
kornia-core = { git = "https://github.com/kornia/kornia-rs", tag = "v0.1.7" }
kornia-io = { git = "https://github.com/kornia/kornia-rs", tag = "v0.1.7" }
kornia-image = { git = "https://github.com/kornia/kornia-rs", tag = "v0.1.7" }
kornia-imgproc = { git = "https://github.com/kornia/kornia-rs", tag = "v0.1.7" }
pip install kornia-rs
The following example shows how to read an image, convert it to grayscale and resize it. The image is then logged to a rerun
recording stream.
Checkout all the examples in the examples
directory to see more use cases.
use kornia::{image::{Image, ImageSize}, imgproc};
use kornia::io::functional as F;
fn main() -> Result<(), Box<dyn std::error::Error>> {
// read the image
let image: Image<u8, 3> = F::read_image_any("tests/data/dog.jpeg")?;
let image_viz = image.clone();
let image_f32: Image<f32, 3> = image.cast_and_scale::<f32>(1.0 / 255.0)?;
// convert the image to grayscale
let mut gray = Image::<f32, 1>::from_size_val(image_f32.size(), 0.0)?;
imgproc::color::gray_from_rgb(&image_f32, &mut gray)?;
// resize the image
let new_size = ImageSize {
width: 128,
height: 128,
};
let mut gray_resized = Image::<f32, 1>::from_size_val(new_size, 0.0)?;
imgproc::resize::resize_native(
&gray, &mut gray_resized,
imgproc::resize::InterpolationMode::Bilinear,
)?;
println!("gray_resize: {:?}", gray_resized.size());
// create a Rerun recording stream
let rec = rerun::RecordingStreamBuilder::new("Kornia App").connect()?;
// log the images
let _ = rec.log("image", &rerun::Image::try_from(image_viz.data)?);
let _ = rec.log("gray", &rerun::Image::try_from(gray.data)?);
let _ = rec.log("gray_resize", &rerun::Image::try_from(gray_resized.data)?);
Ok(())
}
Load an image, that is converted directly to a numpy array to ease the integration with other libraries.
import kornia_rs as K
import numpy as np
# load an image with using libjpeg-turbo
img: np.ndarray = K.read_image_jpeg("dog.jpeg")
# alternatively, load other formats
# img: np.ndarray = K.read_image_any("dog.png")
assert img.shape == (195, 258, 3)
# convert to dlpack to import to torch
img_t = torch.from_dlpack(img)
assert img_t.shape == (195, 258, 3)
Write an image to disk
import kornia_rs as K
import numpy as np
# load an image with using libjpeg-turbo
img: np.ndarray = K.read_image_jpeg("dog.jpeg")
# write the image to disk
K.write_image_jpeg("dog_copy.jpeg", img)
Encode or decode image streams using the turbojpeg
backend
import kornia_rs as K
# load image with kornia-rs
img = K.read_image_jpeg("dog.jpeg")
# encode the image with jpeg
image_encoder = K.ImageEncoder()
image_encoder.set_quality(95) # set the encoding quality
# get the encoded stream
img_encoded: list[int] = image_encoder.encode(img)
# decode back the image
image_decoder = K.ImageDecoder()
decoded_img: np.ndarray = image_decoder.decode(bytes(image_encoded))
Resize an image using the kornia-rs
backend with SIMD acceleration
import kornia_rs as K
# load image with kornia-rs
img = K.read_image_jpeg("dog.jpeg")
# resize the image
resized_img = K.resize(img, (128, 128), interpolation="bilinear")
assert resized_img.shape == (128, 128, 3)
Pre-requisites: install rust
and python3
in your system.
Install rustup in your system
curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh
Install uv
to manage python dependencies
curl -LsSf https://astral.sh/uv/install.sh | sh
Install the just
command runner. This tool is used to manage the development tasks.
cargo install just
Clone the repository in your local directory
git clone https://github.com/kornia/kornia-rs.git
You can check the available commands by running just
in the root directory of the project.
$ just
Available recipes:
check-environment # Check if the required binaries for the project are installed
clean # Clean up caches and build artifacts
clippy # Run clippy with all features
clippy-default # Run clippy with default features
fmt # Run autoformatting and linting
py-build py_version='3.9' # Create virtual environment, and build kornia-py
py-build-release py_version='3.9' # Create virtual environment, and build kornia-py for release
py-install py_version='3.9' # Create virtual environment, and install dev requirements
py-test # Test the kornia-py code with pytest
test name='' # Test the code or a specific test
This project includes a development container to provide a consistent development environment.
The devcontainer is configured to include all necessary dependencies and tools required for building and testing the kornia-rs
project. It ensures that the development environment is consistent across different machines and setups.
How to use
-
Install Remote - Containers extension: In Visual Studio Code, install the
Remote - Containers
extension from the Extensions view (Ctrl+Shift+X
). -
Open the project in the container:
- Open the
kornia-rs
project folder in Visual Studio Code. - Press
F1
and selectRemote-Containers: Reopen in Container
.
- Open the
Visual Studio Code will build the container and open the project inside it. You can now develop, build, and test the project within the containerized environment.
Compile the project and run the tests
just test
For specific tests, you can run the following command:
just test image
To build the Python wheels, we use the maturin
package. Use the following command to build the wheels:
just py-build
To run the tests, use the following command:
just py-test
This is a child project of Kornia. Join the community to get in touch with us, or just sponsor the project: https://opencollective.com/kornia