http://opencv.org/quickstart.html
Installation in Linux
These steps have been tested for Ubuntu 10.04 but should work with other distros as well.
Required Packages
- GCC 4.4.x or later
- CMake 2.8.7 or higher
- Git
- GTK+2.x or higher, including headers (libgtk2.0-dev)
- pkg-config
- Python 2.6 or later and Numpy 1.5 or later with developer packages (python-dev, python-numpy)
- ffmpeg or libav development packages: libavcodec-dev, libavformat-dev, libswscale-dev
- [optional] libtbb2 libtbb-dev
- [optional] libdc1394 2.x
- [optional] libjpeg-dev, libpng-dev, libtiff-dev, libjasper-dev, libdc1394-22-dev
The packages can be installed using a terminal and the following commands or by using Synaptic Manager:
[compiler] sudo apt-get install build-essential
[required] sudo apt-get install cmake git libgtk2.0-dev pkg-config libavcodec-dev libavformat-dev libswscale-dev
[optional] sudo apt-get install python-dev python-numpy libtbb2 libtbb-dev libjpeg-dev libpng-dev libtiff-dev libjasper-dev libdc1394-22-dev
Getting OpenCV Source Code
You can use the latest stable OpenCV version or you can grab the latest snapshot from our Git repository.
Getting the Latest Stable OpenCV Version
- Go to our downloads page.
- Download the source archive and unpack it.
Getting the Cutting-edge OpenCV from the Git Repository
Launch Git client and clone OpenCV repository. If you need modules from OpenCV contrib repository then clone it too.
For example
cd ~/<my_working_directory>
git clone https://github.com/Itseez/opencv.git
git clone https://github.com/Itseez/opencv_contrib.git
Building OpenCV from Source Using CMake
-
Create a temporary directory, which we denote as <cmake_build_dir>, where you want to put the generated Makefiles, project files as well the object files and output binaries and enter there.
For example
cd ~/opencv
mkdir build
cd build -
Configuring. Run cmake [<some optional parameters>] <path to the OpenCV source directory>
For example
cmake -D CMAKE_BUILD_TYPE=Release -D CMAKE_INSTALL_PREFIX=/usr/local ..
or cmake-gui
- set full path to OpenCV source code, e.g. /home/user/opencv
- set full path to <cmake_build_dir>, e.g. /home/user/opencv/build
- set optional parameters
- run: “Configure”
- run: “Generate”
-
Description of some parameters
- build type: CMAKE_BUILD_TYPE=Release\Debug
- to build with modules from opencv_contrib set OPENCV_EXTRA_MODULES_PATH to <path to opencv_contrib/modules/>
- set BUILD_DOCS for building documents
- set BUILD_EXAMPLES to build all examples
-
[optional] Building python. Set the following python parameters:
- PYTHON2(3)_EXECUTABLE = <path to python>
- PYTHON_INCLUDE_DIR = /usr/include/python<version>
- PYTHON_INCLUDE_DIR2 = /usr/include/x86_64-linux-gnu/python<version>
- PYTHON_LIBRARY = /usr/lib/x86_64-linux-gnu/libpython<version>.so
- PYTHON2(3)_NUMPY_INCLUDE_DIRS = /usr/lib/python<version>/dist-packages/numpy/core/include/
-
[optional] Building java.
- Unset parameter: BUILD_SHARED_LIBS
- It is useful also to unset BUILD_EXAMPLES, BUILD_TESTS, BUILD_PERF_TESTS - as they all will be statically linked with OpenCV and can take a lot of memory.
-
Build. From build directory execute make, recomend to do it in several threads
For example
make -j7 # runs 7 jobs in parallel
-
[optional] Building documents. Enter <cmake_build_dir/doc/> and run make with target “html_docs”
For example
cd ~/opencv/build/doc/
make -j7 html_docs -
To install libraries, from build directory execute
sudo make install
-
[optional] Running tests
- Get the required test data from OpenCV extra repository.
For example
git clone https://github.com/Itseez/opencv_extra.git
- set OPENCV_TEST_DATA_PATH environment variable to <path to opencv_extra/testdata>.
- execute tests from build directory.
For example
<cmake_build_dir>/bin/opencv_test_core
Note
If the size of the created library is a critical issue (like in case of an Android build) you can use the install/strip command to get the smallest size as possible. The stripped version appears to be twice as small. However, we do not recommend using this unless those extra megabytes do really matter.
Using OpenCV with gcc and CMake
Note
We assume that you have successfully installed OpenCV in your workstation.
- The easiest way of using OpenCV in your code is to use CMake. A few advantages (taken from the Wiki):
- No need to change anything when porting between Linux and Windows
- Can easily be combined with other tools by CMake( i.e. Qt, ITK and VTK )
- If you are not familiar with CMake, checkout the tutorial on its website.
Steps
Create a program using OpenCV
Let’s use a simple program such as DisplayImage.cpp shown below.
#include <stdio.h>
#include <opencv2/opencv.hpp> using namespace cv; int main(int argc, char** argv )
{
if ( argc != 2 )
{
printf("usage: DisplayImage.out <Image_Path>\n");
return -1;
} Mat image;
image = imread( argv[1], 1 ); if ( !image.data )
{
printf("No image data \n");
return -1;
}
namedWindow("Display Image", WINDOW_AUTOSIZE );
imshow("Display Image", image); waitKey(0); return 0;
}
Create a CMake file
Now you have to create your CMakeLists.txt file. It should look like this:
cmake_minimum_required(VERSION 2.8)
project( DisplayImage )
find_package( OpenCV REQUIRED )
include_directories( ${OpenCV_INCLUDE_DIRS} )
add_executable( DisplayImage DisplayImage.cpp )
target_link_libraries( DisplayImage ${OpenCV_LIBS} )
Generate the executable
This part is easy, just proceed as with any other project using CMake:
cd <DisplayImage_directory>
cmake .
make
Result
By now you should have an executable (called DisplayImage in this case). You just have to run it giving an image location as an argument, i.e.:
./DisplayImage lena.jpg
You should get a nice window as the one shown below: