Copyright 2014 Mitsubishi Electric Research Laboratories All Rights Reserved.
Permission to use, copy and modify this software and its documentation without fee for educational, research and non-profit purposes, is hereby granted, provided that the above copyright notice, this paragraph, and the following three paragraphs appear in all copies.
To request permission to incorporate this software into commercial products contact: Director; Mitsubishi Electric Research Laboratories (MERL); 201 Broadway; Cambridge, MA 02139.
IN NO EVENT SHALL MERL BE LIABLE TO ANY PARTY FOR DIRECT, INDIRECT, SPECIAL, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, INCLUDING LOST PROFITS, ARISING OUT OF THE USE OF THIS SOFTWARE AND ITS DOCUMENTATION, EVEN IF MERL HAS BEEN ADVISED OF THE POSSIBILITY OF SUCH DAMAGES.
MERL SPECIFICALLY DISCLAIMS ANY WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE. THE SOFTWARE PROVIDED HEREUNDER IS ON AN "AS IS" BASIS, AND MERL HAS NO OBLIGATIONS TO PROVIDE MAINTENANCE, SUPPORT, UPDATES, ENHANCEMENTS, OR MODIFICATIONS.
This source code package contains our C++ implementation of the AHC based fast plane extraction for organized point cloud (point cloud that can be indexed as an image). There are three folders in this package:
-
include
Our C++ implementation of the algorithm with dependencies on OpenCV and shared_ptr (from C++11 or Boost).
-
cpp
Two example C++ console applications using our algorithm to extract planes from Kinect-like point cloud (depends on PCL), with a CMake script to help generating project files.
-
matlab
A matlab interface (fitAHCPlane.m) through MEX for using our algorithm in matlab. We also provide a wrapper class Kinect.m and kinect_ahc.m to do real-time plane extraction in matlab, partially depends on a 3rd-party toolbox Kinect_Matlab.
If you use this package, please cite our ICRA 2014 paper:
Feng, C., Taguchi, Y., and Kamat, V. R. (2014). "Fast Plane Extraction in Organized Point Clouds Using Agglomerative Hierarchical Clustering." Proceedings of the IEEE International Conference on Robotics and Automation, Hong Kong, China, 6218-6225.
1.0
-
Install OpenCV, Boost and PCL (If you install PCL using their all-in-one installer, you directly get Boost installed as well).
-
Generate project file using CMake under either Windows or Linux.
-
Compile.
-
Run the compiled process: plane_fitter (first connect a Kinect to your computer!) or plane_fitter_pcd (first modify plane_fitter_pcd.ini accordingly!).
-
Enjoy!
- In matlab:
cd WHERE_YOU_EXTRACT_THE_PACKAGE/matlab/mex
-
Run makefile.m
-
Select the directories for OpenCV_Include, OpenCV_Lib, and Boost_Include respectively
-
If everything compiles smoothly:
cd ..
- Load a single frame we've prepared for you in matlab by:
load frame
- Run our algorithm on the point cloud:
frame.mbs=fitAHCPlane(frame.xyz);
viewSeg(frame.mbs,640,480)
-
Enjoy!
-
If you want to play with the kinect_ahc.m with a Kinect, install Kinect_Matlab first.
Chen Feng
Feel free to email any bugs or suggestions to help us improve the code. Thank you!