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源自:https://github.com/ethz-asl/grid_map
This is a C++ library with ROS interface to manage two-dimensional grid maps with multiple data layers. It is designed for mobile robotic mapping to store data such as elevation, variance, color, friction coefficient, foothold quality, surface normal, traversability etc. It is used in theRobot-Centric Elevation Mapping package designed for rough terrain navigation.
Features:
The grid map package has been tested with ROS Indigo, Jade (under Ubuntu 14.04) and Kinetic (under Ubuntu 16.04). This is research code, expect that it changes often and any fitness for a particular purpose is disclaimed.
The source code is released under a BSD 3-Clause license.
Author: Péter Fankhauser
Maintainer: Péter Fankhauser, pfankhauser@ethz.ch
With contributions by: Martin Wermelinger, Philipp Krüsi, Remo Diethelm, Ralph Kaestner, Elena Stumm, Dominic Jud, Daniel Stonier, Christos Zalidis
Affiliation: Autonomous Systems Lab, ETH Zurich
If you use this work in an academic context, please cite the following publication(s):
P. Fankhauser and M. Hutter,"A Universal Grid Map Library: Implementation and Use Case for Rough Terrain Navigation",in Robot Operating System (ROS) – The Complete Reference (Volume 1), A. Koubaa (Ed.), Springer, 2016. (PDF)
- @incollection{Fankhauser2016GridMapLibrary,
- author = {Fankhauser, Péter and Hutter, Marco},
- booktitle = {Robot Operating System (ROS) – The Complete Reference (Volume 1)},
- title = {{A Universal Grid Map Library: Implementation and Use Case for Rough Terrain Navigation}},
- chapter = {5},
- editor = {Koubaa, Anis},
- publisher = {Springer},
- year = {2016},
- isbn = {978-3-319-26052-5},
- doi = {10.1007/978-3-319-26054-9{\_}5},
- url = {http://www.springer.com/de/book/9783319260525}
- }
An introduction to the grid map library including a tutorial is given in this book chapter.
The C++ API is documented here:
To install all packages from the grid map library as Debian packages use
sudo apt-get install ros-indigo-grid-map
The grid_map_core package depends only on the linear algebra library Eigen.
sudo apt-get install libeigen3-dev
The grid_map_cv package depends additionally on OpenCV.
The other packages depend additionally on the ROS standard installation (roscpp, tf, filters, sensor_msgs, nav_msgs, and cv_bridge).
To build from source, clone the latest version from this repository into your catkin workspace and compile the package using
- cd catkin_ws/src
- git clone https://github.com/ethz-asl/grid_map.git
- cd ../
- catkin_make
To maximize performance, make sure to build in Release mode. You can specify the build type by setting
catkin_make -DCMAKE_BUILD_TYPE=Release
This repository consists of following packages:
GridMap
class and several helper classes such as the iterators. This package is implemented withoutROS dependencies.Run the unit tests with
catkin_make run_tests_grid_map_core run_tests_grid_map_ros
or
catkin build grid_map --no-deps --verbose --catkin-make-args run_tests
if you are using catkin tools.
The grid_map_demos package contains several demonstration nodes. Use this code to verify your installation of the grid map packages and to get you started with your own usage of the library.
simple_demo demonstrates a simple example for using the grid map library. This ROS node creates a grid map, adds data to it, and publishes it. To see the result in RViz, execute the command
roslaunch grid_map_demos simple_demo.launch
tutorial_demo is an extended demonstration of the library's functionalities. Launch thetutorial_demo with
roslaunch grid_map_demos tutorial_demo.launch
iterators_demo showcases the usage of the grid map iterators. Launch it with
roslaunch grid_map_demos iterators_demo.launch
image_to_gridmap_demo demonstrates how to convert data from animage to a grid map. Start the demonstration with
roslaunch grid_map_demos image_to_gridmap_demo.launch
opencv_demo demonstrates map manipulations with help ofOpenCV functions. Start the demonstration with
roslaunch grid_map_demos opencv_demo.launch
resolution_change_demo shows how the resolution of a grid map can be changed with help of theOpenCV image scaling methods. The see the results, use
roslaunch grid_map_demos resolution_change_demo.launch
The grid map library contains various iterators for convenience.
Using the iterator in a for
loop is common. For example, iterate over the entire grid map with theGridMapIterator
with
- for (grid_map::GridMapIterator iterator(map); !iterator.isPastEnd(); ++iterator) {
- cout << "The value at index " << (*iterator).transpose() << " is " << map.at("layer", *iterator) << endl;
- }
The other grid map iterators follow the same form. You can find more examples on how to use the different iterators in theiterators_demo node.
Note: For maximum efficiency when using iterators, it is recommended to locally store direct access to the data layers of the grid map withgrid_map::Matrix& data = map["layer"]
outside the for
loop:
- grid_map::Matrix& data = map["layer"];
- for (GridMapIterator iterator(map); !iterator.isPastEnd(); ++iterator) {
- const Index index(*iterator);
- cout << "The value at index " << index.transpose() << " is " << data(index(0), index(1)) << endl;
- }
You can find a benchmarking of the performance of the iterators in the iterator_benchmark
node of thegrid_map_demos
package which can be run with
rosrun grid_map_demos iterator_benchmark
Beware that while iterators are convenient, it is often the cleanest and most efficient to make use of the built-inEigen methods. Here are some examples:
Setting a constant value to all cells of a layer:
map["layer"].setConstant(3.0);
Adding two layers:
map["sum"] = map["layer_1"] + map["layer_2"];
Scaling a layer:
map["layer"] = 2.0 * map["layer"];
Max. values between two layers:
map["max"] = map["layer_1"].cwiseMax(map["layer_2"]);
Compute the root mean squared error:
- map.add("error", (map.get("layer_1") - map.get("layer_2")).cwiseAbs());
- unsigned int nCells = map.getSize().prod();
- double rootMeanSquaredError = sqrt((map["error"].array().pow(2).sum()) / nCells);
There are two different methods to change the position of the map:
setPosition(...)
: Changes the position of the map without changing data stored in the map. This changes the corresponce between the data and the map frame.move(...)
: Relocates the grid map such that the corresponce between data and the map frame does not change. Data in the overlapping region before and after the position change remains stored. Data that falls outside of the map at its new position is discarded. Cells that cover previously unknown regions are emptied (set to nan). The data storage is implemented as two-dimensional circular buffer to minimize computational effort.This RViz plugin visualizes a grid map layer as 3d surface plot (height map). A separate layer can be chosen as layer for the color information.
This node subscribes to a topic of type grid_map_msgs/GridMap and publishes messages that can be visualized in RViz. The published topics of the visualizer can be fully configure with a YAML parameter file. Any number of visualizations with different parameters can be added. An example ishere for the configuration file of the tutorial_demo.
grid_map_topic
(string, default: "/grid_map")
The name of the grid map topic to be visualized. See below for the description of the visualizers.
/grid_map
(grid_map_msgs/GridMap)
The grid map to visualize.
The published topics are configured with the YAML parameter file. Possible topics are:
point_cloud
(sensor_msgs/PointCloud2)
Shows the grid map as a point cloud. Select which layer to transform as points with thelayer
parameter.
- name: elevation
- type: point_cloud
- params:
- layer: elevation
- flat: false # optional
flat_point_cloud
(sensor_msgs/PointCloud2)
Shows the grid map as a "flat" point cloud, i.e. with all points at the same heightz. This is convenient to visualize 2d maps or images (or even video streams) inRViz with help of its Color Transformer
. The parameter height
determines the desiredz-position of the flat point cloud.
- name: flat_grid
- type: flat_point_cloud
- params:
- height: 0.0
Note: In order to omit points in the flat point cloud from empty/invalid cells, specify the layers which should be checked for validity withsetBasicLayers(...)
.
vectors
(visualization_msgs/Marker)
Visualizes vector data of the grid map as visual markers. Specify the layers which hold thex-, y-, and z-components of the vectors with the layer_prefix
parameter. The parameter position_layer
defines the layer to be used as start point of the vectors.
- name: surface_normals
- type: vectors
- params:
- layer_prefix: normal_
- position_layer: elevation
- scale: 0.06
- line_width: 0.005
- color: 15600153 # red
occupancy_grid
(nav_msgs/OccupancyGrid)
Visualizes a layer of the grid map as occupancy grid. Specify the layer to be visualized with thelayer
parameter, and the upper and lower bound with data_min
anddata_max
.
- name: traversability_grid
- type: occupancy_grid
- params:
- layer: traversability
- data_min: -0.15
- data_max: 0.15
grid_cells
(nav_msgs/GridCells)
Visualizes a layer of the grid map as grid cells. Specify the layer to be visualized with thelayer
parameter, and the upper and lower bounds with lower_threshold
andupper_threshold
.
- name: elevation_cells
- type: grid_cells
- params:
- layer: elevation
- lower_threshold: -0.08 # optional, default: -inf
- upper_threshold: 0.08 # optional, default: inf
region
(visualization_msgs/Marker)
Shows the boundary of the grid map.
- name: map_region
- type: map_region
- params:
- color: 3289650
- line_width: 0.003
Note: Color values are in RGB form as concatenated integers (for each channel value 0-255). The values can be generated likethis as an example for the color green (red: 0, green: 255, blue: 0).
Indigo | Jade | Kinetic | |
---|---|---|---|
grid_map | |||
grid_map_core | |||
grid_map_ros | |||
grid_map_msgs | |||
grid_map_rviz_plugin | |||
grid_map_visualization | |||
grid_map_filters | |||
grid_map_loader | |||
grid_map_demos |
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