** Don't star, this is not my active repo!** Currently it is under a private repository.
Original plan is to merge the two inputs of obstacle bounding boxes and generate a optimized obstacle cubicle map.
First try to reproduce the result of paper: Stereo Vision-based Semantic 3D Object and Ego-motion Tracking for Autonomous Driving
of ECCV 2018.
@article{li2018stereo,
title={Stereo Vision-based Semantic 3D Object and Ego-motion Tracking for Autonomous Driving},
author={Li, Peiliang and Qin, Tong and Shen, Shaojie},
journal={arXiv preprint arXiv:1807.02062},
year={2018}
}
The semantic_mapping_node
subscribes the obstacle map information obstacle_detection::MapInfo from two sets of cameras
and pose information geometry_msgs::PoseStamped /ugv_slam_node/posestamped from wide camera.
The package is based on Ubuntu 16.04 with ROS Kinetics. Additionally you should install:
-
OPENCV 3.1+
-
Eigen 3.2+
-
Install VSLAM and object detection repositories in <YOUR_CATKIN_WORKSPACE>:
cd catkin_ws/src
git clone git@github.com:zhanghanduo/stereo_semantic_mapping.git
cd ..
catkin_make
roslaunch semantic_mapping demo.launch
- [] Early Development - Mapping without optimization
- [] Object Tracking
- [] Sparse Feature Observation
- [] Semantic 3D Object Measurement
- [] Point Cloud Alignment
- [] Joint Optimization
- [] Evaluation