YoloSharp 6.0.1
dotnet add package YoloSharp --version 6.0.1
NuGet\Install-Package YoloSharp -Version 6.0.1
<PackageReference Include="YoloSharp" Version="6.0.1" />
paket add YoloSharp --version 6.0.1
#r "nuget: YoloSharp, 6.0.1"
// Install YoloSharp as a Cake Addin #addin nuget:?package=YoloSharp&version=6.0.1 // Install YoloSharp as a Cake Tool #tool nuget:?package=YoloSharp&version=6.0.1
YoloSharp
🚀 Use YOLO11 in real-time for object detection tasks, with edge performance ⚡️ powered by ONNX-Runtime.
Features
- YOLO Tasks 🌟 Support for all YOLO vision tasks (Detect | OBB | Pose | Segment | Classify)
- High Performance 🚀 Various techniques and use of .NET features to maximize performance
- Reduced Memory Usage 🧠 By reusing memory blocks and reducing the pressure on the GC
- Plotting Options ✏️ Draw the predictions on the target image to preview the model results
- YOLO Versions 🔧 Includes support for: YOLOv8 YOLOv10 YOLO11
Installation
This project provides two NuGet packages:
- For CPU inference, use the package: YoloSharp (includes the Microsoft.ML.OnnxRuntime package)
- For GPU inference, use the package: YoloSharp.Gpu (includes the Microsoft.ML.OnnxRuntime.Gpu package)
Usage
1. Export model to ONNX format:
For convert the pre-trained PyTorch model to ONNX format, run the following Python code:
from ultralytics import YOLO
# Load a model
model = YOLO('path/to/best.pt')
# Export the model to ONNX format
model.export(format='onnx')
2. Load the ONNX model with C#:
Add the YoloSharp
(or YoloSharp.Gpu
) package to your project:
dotnet add package YoloSharp
Use the following C# code to load the model and run basic prediction:
using Compunet.YoloSharp;
// Load the YOLO predictor
using var predictor = new YoloPredictor("path/to/model.onnx");
// Run model
var result = predictor.Detect("path/to/image.jpg");
// or
var result = await predictor.DetectAsync("path/to/image.jpg");
// Write result summary to terminal
Console.WriteLine(result);
Plotting
You can to plot the target image for preview the model results, this code demonstrates how to run a inference, plot the results on image and save to file:
using Compunet.YoloSharp;
using Compunet.YoloSharp.Plotting;
using SixLabors.ImageSharp;
// Load the YOLO predictor
using var predictor = new YoloPredictor("path/to/model.onnx");
// Load the target image
using var image = Image.Load("path/to/image");
// Run model
var result = await predictor.PoseAsync(image);
// Create plotted image from model results
using var plotted = await result.PlotImageAsync(image);
// Write the plotted image to file
plotted.Save("./pose_demo.jpg");
You can also predict and save to file in one operation:
using Compunet.YoloSharp;
using Compunet.YoloSharp.Plotting;
using SixLabors.ImageSharp;
// Load the YOLO predictor
using var predictor = new YoloPredictor("path/to/model.onnx");
// Run model, plot predictions and write to file
predictor.PredictAndSaveAsync("path/to/image");
Example Images:
Detection:
Pose:
Segmentation:
License
AGPL-3.0 License
Important Note: This project depends on ImageSharp, you should check the license details here
Product | Versions Compatible and additional computed target framework versions. |
---|---|
.NET | net8.0 is compatible. net8.0-android was computed. net8.0-browser was computed. net8.0-ios was computed. net8.0-maccatalyst was computed. net8.0-macos was computed. net8.0-tvos was computed. net8.0-windows was computed. |
-
net8.0
- Clipper2 (>= 1.4.0)
- Microsoft.Extensions.DependencyInjection (>= 9.0.0)
- Microsoft.ML.OnnxRuntime (>= 1.20.0)
- SixLabors.ImageSharp (>= 3.1.5)
- SixLabors.ImageSharp.Drawing (>= 2.1.4)
NuGet packages
This package is not used by any NuGet packages.
GitHub repositories
This package is not used by any popular GitHub repositories.