DexiNed
DexiNed is a Convolutional Neural Network (CNN) architecture for edge detection.
Notes:
- Model source: ONNX.
- Model source: .pth.
- This ONNX model has fixed input shape, but OpenCV DNN infers on the exact shape of input image. See https://github.com/opencv/opencv_zoo/issues/44 for more information.
Requirements
Install latest OpenCV >=5.0.0 and CMake >= 3.22.2 to get started with.
Demo
Python
Run the following command to try the demo:
# detect on camera input
python demo.py
# detect on an image
python demo.py --input /path/to/image
# get help regarding various parameters
python demo.py --help
C++
# A typical and default installation path of OpenCV is /usr/local
cmake -B build -D OPENCV_INSTALLATION_PATH=/path/to/opencv/installation .
cmake --build build
# detect on camera input
./build/demo
# detect on an image
./build/demo --input=/path/to/image
# get help messages
./build/demo -h
Example outputs
License
All files in this directory are licensed under MIT License.