Old versions of OpenCvSharp are stored in opencvsharp_2410.
Native binding (OpenCvSharpExtern.dll / libOpenCvSharpExtern.so) is required to work OpenCvSharp. To use OpenCvSharp, you should add both OpenCvSharp4
and OpenCvSharp4.runtime.*
packages to your project. Currently, native bindings for Windows, UWP and Ubuntu are released.
Packages named OpenCvSharp3-* and OpenCvSharp-* are deprecated.
OpenCvSharp3-AnyCPU / OpenCvSharp3-WithoutDll / OpenCvSharp-AnyCPU / OpenCvSharp-WithoutDll
- Ubuntu
- For Google App Engine Flexible (.NET Core 3.1): shimat/appengine-aspnetcore3.1-opencv4.5.0
- For AWS Lambda (.NET 5): shimat/al2-dotnet5-opencv4.5.0
Add OpenCvSharp4
and OpenCvSharp4.runtime.win
NuGet packages to your project. You can use OpenCvSharp4.Windows
instead.
Add OpenCvSharp4
and OpenCvSharp4.runtime.uwp
NuGet packages to your project. Note that OpenCvSharp4.runtime.win
and OpenCvSharp4.Windows
don't work for UWP.
Add OpenCvSharp4
and OpenCvSharp4.runtime.ubuntu.22.04.x64
NuGet packages to your project.
dotnet new console -n ConsoleApp01
cd ConsoleApp01
dotnet add package OpenCvSharp4
dotnet add package OpenCvSharp4_.runtime.ubuntu.22.04-x64
# -- edit Program.cs --- #
dotnet run
If you do not use NuGet, get DLL files from the release page.
- .NET Framework 4.8 / .NET 6 / .NET Standard 2.0
- (Windows) Visual C++ 2022 Redistributable Package
- (Windows Server) Media Foundation
PS1> Install-WindowsFeature Server-Media-Foundation
- (Ubuntu) You must pre-install all the dependency packages needed to build OpenCV. Many packages such as libjpeg must be installed in order to work OpenCV. https://www.learnopencv.com/install-opencv-4-on-ubuntu-18-04/
OpenCvSharp won't work on Unity and Xamarin platform. For Unity, please consider using OpenCV for Unity or some other solutions.
OpenCvSharp does not support CUDA. If you want to use the CUDA features, you need to customize the native bindings yourself.
For more details, see samples and Wiki pages.
Always remember to release Mat instances! The using
syntax is useful.
// C# 8
// Edge detection by Canny algorithm
using OpenCvSharp;
class Program
{
static void Main()
{
using var src = new Mat("lenna.png", ImreadModes.Grayscale);
using var dst = new Mat();
Cv2.Canny(src, dst, 50, 200);
using (new Window("src image", src))
using (new Window("dst image", dst))
{
Cv2.WaitKey();
}
}
}
As mentioned above, objects of classes, such as Mat and MatExpr, have unmanaged resources and need to be manually released by calling the Dispose() method. Worst of all, the +, -, *, and other operators create new objects each time, and these objects need to be disposed, or there will be memory leaks. Despite having the using syntax, the code still looks very verbose.
Therefore, a ResourcesTracker class is provided. The ResourcesTracker implements the IDisposable interface, and when the Dispose() method is called, all resources tracked by the ResourcesTracker are disposed. The T() method of ResourcesTracker can trace an object or an array of objects, and the method NewMat() is like T(new Mat(...). All the objects that need to be released can be wrapped with T().For example: t.T(255 - t.T(picMat * 0.8)) . Example code is as following:
using (var t = new ResourcesTracker())
{
Mat mat1 = t.NewMat(new Size(100, 100), MatType.CV_8UC3, new Scalar(0));
Mat mat3 = t.T(255-t.T(mat1*0.8));
Mat[] mats1 = t.T(mat3.Split());
Mat mat4 = t.NewMat();
Cv2.Merge(new Mat[] { mats1[0], mats1[1], mats1[2] }, mat4);
}
using (var t = new ResourcesTracker())
{
var src = t.T(new Mat(@"lenna.png", ImreadModes.Grayscale));
var dst = t.NewMat();
Cv2.Canny(src, dst, 50, 200);
var blurredDst = t.T(dst.Blur(new Size(3, 3)));
t.T(new Window("src image", src));
t.T(new Window("dst image", blurredDst));
Cv2.WaitKey();
}
- OpenCvSharp is modeled on the native OpenCV C/C++ API style as much as possible.
- Many classes of OpenCvSharp implement IDisposable. There is no need to manage unsafe resources.
- OpenCvSharp does not force object-oriented programming style on you. You can also call native-style OpenCV functions.
- OpenCvSharp provides functions for converting from
Mat
intoBitmap
(GDI+) orWriteableBitmap
(WPF).
https://github.com/shimat/opencvsharp_samples/
http://shimat.github.io/opencvsharp/api/OpenCvSharp.html
- Install Visual Studio 2022 or later
- VC++ features are required.
- Run
download_opencv_windows.ps1
to download OpenCV libs and headers from https://github.com/shimat/opencv_files. Those lib files are precompiled by the owner of OpenCvSharp using GitHub Actions.
.\download_opencv_windows.ps1
- Build OpenCvSharp
- Open
OpenCvSharp.sln
and build
- Open
If you want to use some OpenCV features that are not provided by default in OpenCvSharp (e.g. GPU), you will have to build OpenCV yourself. The binary files of OpenCV for OpenCvSharp for Windows are created in the opencv_files repository. See the README.
git clone --recursive https://github.com/shimat/opencv_files
- Edit
build_windows.ps1
orbuild_uwp.ps1
to customize the CMake parameters . - Run the PowerShell script.
- Build OpenCV with opencv_contrib.
- Install .NET Core SDK. https://learn.microsoft.com/ja-jp/dotnet/core/install/linux-ubuntu
- Get OpenCvSharp source files
git clone https://github.com/shimat/opencvsharp.git
cd opencvsharp
git fetch --all --tags --prune && git checkout ${OPENCVSHARP_VERSION}
- Build native wrapper
OpenCvSharpExtern
cd opencvsharp/src
mkdir build
cd build
cmake -D CMAKE_INSTALL_PREFIX=${YOUR_OPENCV_INSTALL_PATH} ..
make -j
make install
You should add reference to opencvsharp/src/build/OpenCvSharpExtern/libOpenCvSharpExtern.so
export LD_LIBRARY_PATH="${LD_LIBRARY_PATH}:/home/shimat/opencvsharp/src/build/OpenCvSharpExtern"
- Add
OpenCvSharp4
NuGet package to your project
dotnet new console -n ConsoleApp01
cd ConsoleApp01
dotnet add package OpenCvSharp4
# -- edit Program.cs --- #
dotnet run
If you find the OpenCvSharp library useful and would like to show your gratitude by donating, here are some donation options. Thank you.