Kernel-Based Hough Transform for Detecting Straight Lines in Images
This repository contains the reference implementation of the Kernel-Based Hough Transform (KHT). The KHT is a real-time line detection procedure that extends the conventional voting procedure of the Hough transform. It operates on clusters of approximately collinear pixels. For each cluster, the KHT casts votes using an oriented elliptical-Gaussian kernel that models the uncertainty associated with the best-fitting line for the corresponding cluster. The proposed approach not only significantly improves the performance of the voting scheme, but also produces a much cleaner voting map and makes the transform more robust to the detection of spurious lines.
Please cite our Pattern Recognition paper if you use this code in your research:
@Article{fernandes_oliveira-pr-41(1)-2008,
author = {Fernandes, Leandro A. F. and Oliveira, Manuel M.},
title = {Real-time line detection through an improved {H}ough transform voting scheme},
journal = {Pattern Recognition},
year = {2008},
volume = {41},
number = {1},
pages = {299--314},
doi = {https://doi.org/10.1016/j.patcog.2007.04.003},
url = {http://www.ic.uff.br/~laffernandes/projects/kht},
}
The paper presents a complete description of the implemented technique. You will find additional material on the project's page.
Please, let Leandro A. F. Fernandes (laffernandes@ic.uff.br) knows if you want to contribute to this project. Also, do not hesitate to contact him if you encounter any problems.
Contents:
1. Requirements
Make sure that you have the following tools before attempting to use KHT.
Required tool:
- Your favorite C++11 compiler.
- CMake (version >= 3.14) to automate installation and to build and run examples.
Optional tool:
- Python 2 or 3 interpreter, if you want to build and use KHT with Python.
- MATLAB (version >= R2007a), if you want to build and use KHT with MATLAB.
- Virtual enviroment to create an isolated workspace for a Python application.
The reference implementation of the KHT doesn't have any dependencies other than the C++ standard library. But some libraries are required if you want to use KHT with Python or build the sample Python and C++ applications.
Required Python packages and C++ libraries, if you want to use KHT with Python:
- NumPy, the fundamental package for scientific computing with Python.
- Boost.Python (version >= 1.56), a C++ library which enables seamless interoperability between C++ and the Python programming language.
- Boost.NumPy, a C++ library that extends Boost.Python to NumPy.
Required C++ libraries and Python packages, if you want to build the C++ and Python sample application, respectively:
- OpenCV (version >= 2.2), a C++ library of programming functions mainly aimed at real-time computer vision.
- OpenCV-Python, a wrapper package for OpenCV Python bindings.
- Matplotlib, a Python 2D plotting library which produces publication quality figures in a variety of hardcopy formats.
2. How to Install KHT
Use the git clone command to download the project, where <kht-dir>
must be replaced by the directory in which you want to place KHT's source code, or removed <kht-dir>
from the command line to download the project to the ./kht
directory:
git clone https://github.com/laffernandes/kht.git <kht-dir>
The basic steps for configuring, building, and installing the KHT library look like this:
cd <kht-dir>/cpp
mkdir build
cd build
cmake ..
cmake --build . --config Release --target install
Notice that you may use the -G <generator-name>
option of CMake's command-line tool to choose the build system (e.g., Unix makefiles, Visual Studio, etc.). Please, refer to CMake's Help for a complete description of how to use the CMake's command-line tool.
Installing the Python Module
We provide a back-end to access KHT from a Python environment. In order to make it available, you have to build the kht
module, after installing the KHT library, using the commands presented bellow:
cd <kht-dir>/python
mkdir build
cd build
cmake ..
cmake --build . --config Release --target install
It is important to emphasize that both Python 2 and 3 are supported. Please, refer to CMake's documentation for details about how CMake finds the Python interpreter, compiler, and development environment.
Finally, add <cmake-install-prefix>/lib/kht/python/<python-version>
to the the PYTHONPATH
environment variable. The <cmake-install-prefix>
placeholder usually is /usr/local
on Linux, and C:/Program Files/KHT
or C:/Program Files (x86)/KHT
on Windows. But it may change according to what was set in CMake. The <python-version>
placeholder is the version of the Python interpreter found by CMake.
Set the PYTHONPATH
variable by calling following command in Linux:
export PYTHONPATH="$PYTHONPATH:<cmake-install-prefix>/lib/kht/python/<python-version>"
But this action is not permanent. The new value of PYTHONPATH
will be lost as soon as you close the terminal. A possible solution to make an environment variable persistent for a user's environment is to export the variable from the user's profile script:
- Open the current user's profile (the
~/.bash_profile
file) into a text editor. - Add the export command for the
PYTHONPATH
environment variable at the end of this file. - Save your changes.
Execute the following steps to set the PYTHONPATH
in Windows:
- From the Windows Explorer, right click the Computer icon.
- Choose Properties from the context menu.
- Click the Advanced system settings link.
- Click Environment Variables. In the section System Variables, find the
PYTHONPATH
environment variable and select it. Click Edit. If thePYTHONPATH
environment variable does not exist, click New. - In the Edit System Variable (or New System Variable) window, specify the value of the
PYTHONPATH
environment variable to include"<cmake-install-prefix>/lib/kht/python/<python-version>"
. Click OK. Close all remaining windows by clicking OK. - Reopen yout Python environment.
Installing the MATLAB Wrapper
We provide a back-end to access KHT from MATLAB. In order to make it available, you have to build the MEX-file, after installing the KHT library, using the commands presented bellow:
cd <kht-dir>/matlab
mkdir build
cd build
cmake ..
cmake --build . --config Release --target install
Finally, open MATLAB and use the following commands to the instaled wrapper to MATLAB's search path:
addpath('<cmake-install-prefix>/lib/kht/matlab')
savepath
The <cmake-install-prefix>
placeholder usually is /usr/local
on Linux, and C:/Program Files/KHT
or C:/Program Files (x86)/KHT
on Windows. But it may change according to what was set in CMake.
Sometimes CMake tells you that "Could NOT find Matlab (missing: Matlab_MEX_LIBRARY)" even when MATLAB is appropriately installed. In this case, you have to check whether the correct architecture (32- vs. 64-bit compiler) was selected for compiling the KHT library and its MATLAB wrapper. For instance, on Windows, instead of using CMake with the "Visual Studio 15 2017" generator, try to use the "Visual Studio 15 2017 Win64" generator and vice versa.
3. Compiling Examples
The basic steps for configuring and building the C++ example of the KHT look like this:
cd <kht-dir>/cpp/example
mkdir build
cd build
cmake ..
cmake --build . --config Release
Call ./main
to run the executable file produced on Linux, and Release\\main.exe
to run on Windows.
Recall that <kht-dir>
is the directory in which you placed KHT's source code.
Use the files in the <kht-dir>/cpp/example
directory as examples of how to configure and call the reference implementation of the KHT from your C++ program. For instance, after installation of the KHT library, CMake will find KHT using the command find_package(KHT)
(see the <kht-dir>/cpp/example/CMakeLists.txt
file and the CMake documentation for details). Also, you will be able to use the KHT_INCLUDE_DIRS
variable in the CMakeList.txt
file of your program while defining the include directories of your C++ project or targets. In your source code, you have to use the #include <kht/kht.hpp>
directive to include the contents of the standard header file and then call the kht
procedure (see the <kht-dir>/cpp/example/kht_example.cpp
file).
Similarly, you will find examples of how to use the KHT library with Python and MATLAB in, respectively, the <kht-dir>/python/example
and <kht-dir>/matlab/example
directories.
4. Related Project
Please, visit the project's page to find a list of related projects.
5. License
This software is licensed under the GNU General Public License v3.0. See the LICENSE
file for details.
6. Releases
Version 2.0.0
- REPOSITORY: The project moved from SourceForge to GitHub.
- BUILD SYSTEM: CMake becomes the default build system of KHT. Platform-specific solutions will not be provided anymore.
- PYTHON: The Python back-end was included.
Version 1.0.4
- BUG FIX: In the
next()
function oflinking.cpp
file, there were no protections against accessing pixels outside the image limits. The author would like to thank Timo Knuutile for pointing out this problem.
Version 1.0.3
- UPDATE: The
kht_compile.m
file was ported to MATLAB R2011b, and a Microsoft Visual Studio 2010 project was included.
Version 1.0.2
- BUG FIX: In line 177 of peak_detection.cpp file, the function
compare_bins
was being forced to assume a non-standard calling convention when passed as an argument tostd::qsort()
function, preventing its compilation on Linux. The problem was fixed. The authors would like to thank Laurens Leeuwis for pointing out this problem.
Version 1.0.1
- BUG FIX: During the initialization of the accumulator, the last item of the lookup table defining the discrete
theta
values was not initialized. In such a case, the value should be180-delta
degrees. As a result, detected lines havingtheta = 180-delta
were getting a random angular value. The authors would like to thank Dave Wood for pointing out this problem.
Version 1.0.0
- NEW: Everything is new.
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