WARNING
Isaac ROS Apriltag has moved to NVIDIA-ISAAC-ROS (2021-10-20). Please visit here to find new development and file issues.
This ROS2 node uses the NVIDIA GPU-accelerated AprilTags library to detect AprilTags in images and publishes their poses, IDs, and additional metadata. This has been tested on ROS2 (Foxy) and should build and run on x86_64 and aarch64 (Jetson). It is modeled after and comparable to the ROS2 node for CPU AprilTags detection.
For more information on the Isaac GEM that this node is based off of, see the latest Isaac SDK documentation here.
For more information on AprilTags themselves, including the paper and the reference CPU implementation, click here.
This Isaac ROS package is designed and tested to be compatible with ROS2 Foxy on Jetson hardware.
- AGX Xavier or Xavier NX
- JetPack 4.6
- CUDA 10.2+ supported discrete GPU
- VPI 1.1.11
- Ubuntu 18.04+
Precompiled ROS2 Foxy packages are not available for JetPack 4.6 (based on Ubuntu 18.04 Bionic). You can either manually compile ROS2 Foxy and required dependent packages from source or use the Isaac ROS development Docker image from Isaac ROS Common based on images from jetson-containers.
Run the following script in isaac_ros_common
to build the image and launch the container:
$ scripts/run_dev.sh <optional path>
You can either provide an optional path to mirror in your host ROS workspace with Isaac ROS packages, which will be made available in the container as /workspaces/isaac_ros-dev
, or you can setup a new workspace in the container.
Note: `isaac_ros_common' is used for running tests and/or creating a development container. It also contains VPI Debian packages that can be installed natively on a development machine without the container.
- Create a ROS2 workspace if one is not already prepared:
mkdir -p your_ws/src
Note: The workspace can have any name; the quickstart assumes you name ityour_ws
. - Clone this package repository to
your_ws/src/isaac_ros_apriltag
. Check that you have Git LFS installed before cloning to pull down all large files.
cd your_ws/src && git clone https://github.com/NVIDIA-AI-IOT/isaac_ros_apriltag
- Build and source the workspace:
cd your_ws && colcon build --symlink-install && source install/setup.bash
- (Optional) Run tests to verify complete and correct installation:
colcon test
- Start
isaac_ros_apriltag
using the prebuilt executable:
ros2 run isaac_ros_apriltag isaac_ros_apriltag
- In a separate terminal, spin up a calibrated camera publisher to
/image_rect
and/camera_info
using any package (for example,v4l2_camera
):
ros2 run v4l2_camera v4l2_camera_node --ros-args -r /image_raw:=/image_rect
- Observe the AprilTag detection output
/tag_detections
on a separate terminal with the command:
ros2 topic echo /tag_detections
You will need to calibrate the intrinsics of your camera if you want the node to determine 3D poses for tags instead of just detection and corners as 2D pixel coordinates. See here for more details.
- Add a dependency on
isaac_ros_apriltag
toyour_package/package.xml
andyour_package/CMakeLists.txt
. The originalapriltag_ros
dependency may be removed entirely. - Change the package and plugin names in any
*.launch.py
launch files to useisaac_ros_apriltag
andAprilTagNode
, respectively.
isaac_ros_image_pipeline
: Accelerated metapackage offering similar functionality to the standard CPU-basedimage_pipeline
metapackageisaac_ros_common
: Utilities for robust ROS2 testing, in conjunction withlaunch_test
This tutorial will help you quickly run and experiment with the full Isaac ROS Apriltag pipeline, from camera frames to tag detections.
- Complete the Quickstart steps above.
- Connect a compatible camera to your Jetson and set up the camera publisher stream. Your camera vendor may offer a specific ROS2-compatible camera driver package. Alternatively, many generic cameras are compatible with the
v4l2_camera
package.
Important: Ensure that the camera stream publishesImage
andCameraInfo
pairs to the topics/image_raw
and/camera_info
, respectively. - Ensure that your workspace has been built and sourced, if you have not done so already:
cd your_ws && colcon build --symlink-install && source install/setup.bash
- Finally, launch the pre-composed pipeline launchfile:
ros2 launch isaac_ros_apriltag isaac_ros_apriltag_pipeline.launch.py
Detections will show up at /tag_detections
.
Note For best performance on Jetson, ensure that power settings are configured appropriately (Power Management for Jetson).
Now that you have successfully launched the full Isaac ROS Apriltag pipeline, you can easily adapt the provided launchfile to integrate with your existing ROS2 environment.
Alternatively, since the AprilTagNode
is provided as a ROS2 Component, you can also compose the accelerated Apriltag processor directly into an existing executable.
The isaac_ros_apriltag
package offers functionality for detecting poses from AprilTags in the frame. It largely replaces the apriltag_ros
package, though an included dependency on the ImageFormatConverterNode
plugin of the isaac_ros_image_proc
package also functions as a way to replace the CPU-based image format conversion in cv_bridge
.
Component | Topics Subscribed | Topics Published | Parameters |
---|---|---|---|
AprilTagNode |
camera/image_rect , camera/camera_info : The input camera stream |
tag_detections : The detection message array tf : The tag poses |
family : The tag family for the detector (this value can only be 36h11 at this time) size : The tag edge size in meters, assuming square markers max_tags : The maximum number of tags to be detected, which is 20 by default |