Skip to content

jabir366/vehicle_detection_haarcascades

 
 

Repository files navigation

Vehicle Detection with Haar Cascades

Last page update: 19/10/2016

Last version: 1.0.0 (see Release Notes for more info)

Hello everyone, An easy way to perform vehicle detection is by using Haar Cascades. Currently, I don't have a detailed tutorial about it, but you can get some extra information in the OpenCV homepage, see Cascade Classifier page. See also Cascade Classifier Training for training your own cascade classifier.

The haar-cascade cars.xml was trained using 526 images of cars from the rear (360 x 240 pixels, no scale). The images were extracted from the Car dataset proposed by Brad Philip and Paul Updike taken of the freeways of southern California.

For more information, please see:

For Windows users

  • Check if your OpenCV is installed at: C:\OpenCV2.4.10
  • There is a Visual Studio 2013 template project in the vs2013/ folder. Open it in the Visual Studio IDE and select [Release]-[Win32] or [Release]-[x64] mode. Next, click on run_vehicle_detection.bat and enjoy!

For Linux users

  • For Linux and Mac users, a Makefile is provided to compile the source code.
    • Requirements: OpenCV 2.4.x (it only works with this version).
    • Check out the latest project source code and compile it:
~/git clone https://github.com/andrewssobral/vehicle_detection_haarcascades.git
~/cd vehicle_detection_haarcascades
~/vehicle_detection_haarcascades/ chmod +x run_vehicle_detection_video1.sh
~/vehicle_detection_haarcascades/ chmod +x run_vehicle_detection_video2.sh
~/vehicle_detection_haarcascades/cd build
~/vehicle_detection_haarcascades/build/ cmake ..
~/vehicle_detection_haarcascades/build/ make
    • Run demos:
~/vehicle_detection_haarcascades/run_vehicle_detection_video1.sh
~/vehicle_detection_haarcascades/run_vehicle_detection_video2.sh

Docker image

Release Notes:

  • Version 1.0.0: First version.

About

Vehicle Detection by Haar Cascades with OpenCV

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • C++ 60.3%
  • Python 16.3%
  • Batchfile 10.4%
  • CMake 8.9%
  • Shell 4.1%