YOLO_ORB_SLAM3
YOLO_ORB_SLAM3 copied to clipboard
This is an improved version of ORB-SLAM3 that adds an object detection module implemented with YOLOv5 to achieve SLAM in dynamic environments.
YOLO_ORB_SLAM3
This is an improved version of ORB-SLAM3 that adds an object detection module implemented with YOLOv5 to achieve SLAM in dynamic environments.
- Object Detection
- Dynamic SLAM
Fig 1 : Test with TUM dataset
Getting Started
0. Prerequisites
We have tested on:
OS = Ubuntu 20.04
OpenCV = 4.2
Eigen3 = 3.3.9
Pangolin = 0.5
ROS = Noetic
1. Install libtorch
Recommended way
You can download the compatible version of libtorch from Baidu Netdisk code: 8y4k, then
unzip libtorch.zip
mv libtorch/ PATH/YOLO_ORB_SLAM3/Thirdparty/
Or you can
wget https://download.pytorch.org/libtorch/cpu/libtorch-cxx11-abi-shared-with-deps-1.11.0%2Bcpu.zip
unzip libtorch-cxx11-abi-shared-with-deps-1.11.0%2Bcpu.zip
mv libtorch/ PATH/YOLO_ORB_SLAM3/Thirdparty/
2. Build
cd YOLO_ORB_SLAM3
chmod +x build.sh
./build.sh
Only the rgbd_tum target will be build.
3. Build ROS Examples
Add the path including Examples/ROS/YOLO_ORB_SLAM3 to the ROS_PACKAGE_PATH environment variable. Open .bashrc file:
gedit ~/.bashrc
and add at the end the following line. Replace PATH by the folder where you cloned YOLO_ORB_SLAM3:
export ROS_PACKAGE_PATH=${ROS_PACKAGE_PATH}:PATH/YOLO_ORB_SLAM3/Examples/ROS
Then build
chmod +x build_ros.sh
./build_ros.sh
Only the RGBD target has been improved.
The frequency of camera topic must be lower than 15 Hz.
You can run this command to change the frequency of topic which published by the camera driver.
roslaunch YOLO_ORB_SLAM3 camera_topic_remap.launch
4. Try
TUM Dataset
./Examples/RGB-D/rgbd_tum Vocabulary/ORBvoc.txt Examples/RGB-D/TUMX.yaml PATH_TO_SEQUENCE_FOLDER ASSOCIATIONS_FILE
ROS
roslaunch YOLO_ORB_SLAM3 camera_topic_remap.launch
rosrun YOLO_ORB_SLAM3 RGBD PATH_TO_VOCABULARY PATH_TO_SETTINGS_FILE