Skip to content

Creating a segmented 3D octomap of the surroundings using ORB-SLAM3, with the possibility of removing or adding specific segmented objects to the octomap.

License

Notifications You must be signed in to change notification settings

BADAL244/3dMapSLAM

 
 

Repository files navigation

ORB-SLAM3 with Segmented 3D Map Construction

This project was part of a robotics software engineering internship at Visual Behavior - April 2021.

1. Description

The purpose of this software is to use SLAM with RGB-D images to create a 3D colored map of the surroundings, with a possibility of adding and removing static and moving objects, people, floor, etc. by using image segmentation and filtering the 3D map accordingly.

We present an example of constructing a map of the free space on the ground by removing static and moving objects, people, etc. The generated map allows a robot to move freely in this free space. ZED cameras and SVO pre-recorded video were used for demonstration. We used ROS with Python and C++ to combine different modules easily.

The code is modular making it easy to use another image segmentation model to remove or add any object to the 3D map.

It is mainly based on ORB-SLAM3, and we added the map creation using OctoMap similarly to DS-SLAM. The image segmentation is based on DETR: End-to-End Object Detection with Transformers.

2. Prerequisites

We tested the software on Ubuntu 18.04 with a computer running on Intel i7, 16 GB of RAM, and RTX 2070.

2.1. ORB-SLAM3

Install all ORB-SLAM3 prerequisites ORB-SLAM3

IMPORTANT NOTE: Download Eigen3.2.x and OpenCV3.x instead of the newer versions. Newer versions may have compatibility issues. You may have to build and compile OpenCV3.x locally: Installing OpenCV3

We used the binary of the ORB Vocabulary instead of the text for faster execution startup.

Unzip the ORBvoc.zip in the Vocabulary directory, and name it ORBvoc.bin

2.2. ROS

Tested on ROS-MELODIC: http://wiki.ros.org/melodic/Installation/Ubuntu

For image segmentation, we need Python3. Since ROS’s default python is Python2, we need to add support to Python3.

Follow this article to setup ROS with Python3: How to setup ROS with Python3

This is an example of how .bashrc or .zshrc should look like:

source /home/${USER}/catkin_ws/devel/setup.zsh
source /home/${USER}/catkin_build_ws/install/setup.zsh
source /home/${USER}/catkin_build_ws/devel/setup.zsh
export ROS_PACKAGE_PATH=${ROS_PACKAGE_PATH}:/home/${USER}/ORB_SLAM3/Examples/ROS

catkin_ws is the recommended ROS directory. catkin_build_ws is the ROS with Python3 support directory.

2.3. CUDA, cuDNN, and TensorRT

Tested on CUDA 11.2, cuDNN 8.1.1, TensorRT 7.2.2.

Follow this article to setup the NVIDIA environment: Setting up your NVIDIA environment

2.4. OctoMap

Used OctoMap for map generation using ROS and visualized using RVIZ.

2 ROS dependencies are needed: octomap_mapping and octomap_rviz_plugins

We suggest that the installation path of octomap_mapping and octomap_rviz_plugins be catkin_ws/src.

To add color support for the octomap, add #define COLOR_OCTOMAP_SERVER into the OctomapServer.h at the folder of octomap_mapping/octomap_server/include/octomap_server

2.5. ZED (Optional)

Tested used ZED cameras and ZED SVO videos. We used a ROS wrapper on top of ZED SDK to easily subscribe to topics create by ZED-Wrapper to get the images and their data. We used the RGB-D images generated by the ZED stereo cameras.

Note that it is possible to use other types of cameras as long as it publishes the RGB-D image on a ROS topic. Follow this article to install ZED: ZED Installation

3. How to build

Please make sure you have installed all required dependencies.

We provide a script build.sh to build ORB-SLAM3 with PointCloud. Execute:

cd ORB_SLAM3
chmod +x build.sh
./build.sh

This will create libORB_SLAM3.so at lib folder and the executables in Examples folder.

Then we need to build the ROS wrapper of ORB-SLAM3 and ImageSegmentation by executing:

chmod +x build_ros.sh
./build_ros.sh

This targets the directory Examples/ROS/ORB_SLAM3 and Examples/ROS/pointcloud_segmentation

Note: In build_ros.sh, you may have to change the path of Python3 paths (PYTHON_EXECUTABLE, PYTHON_INCLUDE_DIR, PYTHON_LIBRARY) mentioned in the article How to setup ROS with Python3

4. How to run

To run the software, you need to run roscore (optional) and 2 different bash files:

  1. Run roscore in one terminal (optional)
  2. In another terminal, execute the slam_rgbd_zed_ros.sh file. This executes a ROS launch file slam_rgbd_zed.launch with different parameters depending on the ZED camera model. This ROS launch files runs the ROS Nodes: ORB-SLAM3, ImageSegmentation, OctoMap, Transformations, and RVIZ.
chmod +x slam_rgbd_zed_ros.sh
./slam_rgbd_zed_ros.sh zed

The first argument is the camera model, with the resolution (default is HD)

Possible arguments are: zed zed-vga zed2 zedm

  1. In another terminal, we need to execute the bash file responsible of publishing images from ZED or SVO files to ROS topics.
chmod +x publish_images_zed.sh
./publish_images_zed.sh zed  # for a connected zed camera with live images
./publish_images_zed.sh zed2 svo_file_path.svo  # for an SVO video recorded with a ZED2 camera

Possible arguments:

  1. First argument is the camera model: zed zed2 zedm
  2. Second argument is the SVO file path, if not provided, images from the connected camera will be published

Additional notes

Order of execution: the order of execution of the bash files doesn't matter, because each one will wait for the other to proceed.

After executing the slam_rgbd_zed_ros.sh, 3 new windows should open: image viewer of the current frame, viewer of the trajectory and keyframes, and RVIZ.

Visualizing the OctoMap on RVIZ: in RVIZ, add the ColorOccupancyGrid in octomap_rviz_plugins, and subscribe to the topic /octomap_full. You should see the colored octomap being constructed in real-time. You can display the color of the cell based on the original color, depth, and probability in Voxel Coloring.

5. How it works

The software is made up of 6 different nodes running in parallel:

5.1. ZED

Responsible for taking images from either a camera or an SVO video and publishing the images to a ROS topic.

The ZED camera configurations and parameters (.yaml files) are located in zed/params/

5.2. Segmentation

Responsible for segmenting the RGB images from ZED, and creating a mask based on the segmentations. Then, publishes the mask to a new ROS topic. Note that the current implementation creates a mask of the ground. This can be easily modified to create a mask of people, etc... The code is located in Examples/ROS/pointcloud_segmentation.

You can easily use another model by creating a similar node, making sure that you are publishing a mask of the areas to be added to the point cloud.

For confidential purposes, the class responsible for DETR and segmentation has been removed from the public repo.

5.3. SLAM + PointCloud

  1. Runs the official ORB-SLAM3 based on RGB-D input images
  2. Additional PointCloudMapper responsible for creating and publishing the point clouds. How it works:
    1. Get the RGB-D, KeyFrame, CameraPose, and Sequence number from ORB-SLAM3
    2. Subscribe to the mask ROS topic, and wait for a mask with the same sequence number to be received
    3. Create a point cloud and a transformation matrix (camera to world) based on all the previous data
    4. Publish the point cloud and transformation matrix to 2 new ROS topics This code is located in src/PointCloudMapping.cc

5.4. Transformation

Responsible for handling transformations from the camera to robot, and from the camera to world.

We have 3 frames in the current implementation:

  1. /map the main frame of reference
  2. /cameraToRobot the frame which transforms the camera to the robot body (depends on the position and orientation of the camera on the robot)
  3. /pointCloudFrame the frame of the point cloud, based on the translation and rotation of the camera

Note that frame 3. is a child of frame 2. which is a child of frame 1. This code is located in src/PointCloudMapping.cc This transformation is applied on the point cloud handled by OctoMap.

Note: the /cameraToRobot depends on the position and orientation of the camera with respect to the robot. You may need to change this accordingly. This is located in the launch file /Examples/ROS/ORB_SLAM3/launch/transform.launch

5.5. OctoMap

Responsible for generating an octomap based on the previously published point clouds and transformation matrices.

Note about the resolution of PointCloud and OctoMap: you can change the resolution of the published point cloud and octomap by modifying the values in /Examples/ROS/ORB_SLAM3/launch/octomap.launch and the value of PointCloudMapping.Resolution in the zed configuration .yaml files in /zed/params.

Make sure that both point cloud and octomap have the same resolution.

5.6. RVIZ

Responsible for visualization of the point clouds and the octomap.

6. Significant files

  • For Main Launch File:
    • ./slam_rgbd_zed.launch
  • For ORB-SLAM3:
    • ./src/System.cc
    • ./src/Tracking.cc
    • ./Examples/ROS/ORB_SLAM3/src/ros_rgbd.cc
  • For PointCloud, Segmentation and Transformations:
    • ./src/PointCloudMapping.cc
    • ./Examples/ROS/pointcloud_segmentation/src/image_segmentation.py
    • ./Examples/ROS/ORB_SLAM3/launch/transform.launch
  • For Octomap:
    • ./Examples/ROS/ORB_SLAM3/launch/octomap.launch
    • /home/${USER}/catkin_ws/src/octomap_mapping/octomap_server/src/OctomapServer.cpp
  • For ZED configurations:
    • ./zed/params

About

Creating a segmented 3D octomap of the surroundings using ORB-SLAM3, with the possibility of removing or adding specific segmented objects to the octomap.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • C++ 98.3%
  • Python 1.1%
  • Other 0.6%