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Roadmap
aslyansky-m edited this page Jan 5, 2019
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Currently working on bold
- setup AirSim
- add cone position information
- dataset generation pipeline
- augmentation
- noise
- low light
- weather
- generate dataset
- train YOLOv3-tiny
- see here
- test inference
- test inference performance on Xavier
- annotate real data
- retrain the network
- test in real-world
- improvements:
- add sub-pixel refinement
- add tracking
- test orbslam 2
- discarded as not robust enough
- test orbslam_dwo
- discarded since no RT branch available, also slower than original orbslam
- test rovio
- works OK on servo data
- test servo on provided data
- bugfixes - doesn't compile
- compile
- test ROS node on provided data - works fine
- conclusion: continue working with servo
- integrate servo with the main system
- calibrate our cameras and IMU
- test on our data
- performance optimization
- integrate with orbslam2-gpu
- add binary vocabulary
- remove Pangolin GUI
- publish points and poses to ROS
- test cone detection
- implement cone detector and descriptor
- implement data fusion in orbslam
- test on the car
- define ROS node topology
- add documentation
- camera
- LIDAR
- Nvidia Jetson setup
- capture with rosbag
- install and run on the car
- capture demo content
- capture real content
-
Nvidia Drive PX2 setup - after meeting with Nvidia decided to use Jetson AGX Xavier
- improve capture
- debug ZED low fps
- find good IMU
- automate capture - launch files
- capture new content
- Nvidia Jetson Xavier setup
- install and run on the car
- TODO: update regarding the electric car
- sensors
- control
- install ROS velodyne drivers
- test and store data
- control LIDAR speed from ROS, see here
- filter LIDAR by FOV and distance, search for ring information, see here
- LIDAR-camera calibration
- lidar_camera_calibration doesn't compile, todo: debug
- try this
- fusion with camera
- test the data
- add node to ROS
- ground removal
- cone segmentation and clustering
- cone tracking
- probably redundant
- additional filtering
- color from intensity
- color from camera
- test off the shelf LIDAR SLAM solutions
- loam_velodyne - not good enough for tracking cones
- hdl_graph_slam - doesn't compile
- LeGO-LOAM - worse than loam_velodyne
- cartographer - compiled, looks promising, but integration is difficult
- next will unlikely work
- mrpt
- gmapping
- hector_mapping - similar to gmapping
- conclusion: general-purpose LIDAR SLAM is not good enough