Date of releasing our source code: Currently, our paper is under review, and our code is under-reconstruction. We will release our source code after the first round of review if the reviewer's comments are positive.
Our preprint paper: we have corrected some typos and errors of our previous version of paper, the amended paper can be access at here. When amending our paper, I would like to thanks narutojxl (焦小亮), who has found my errors and provided his corrections.
Our related video: our related video is now available on YouTube (click below images to open):
R2LIVE is a robust, real-time tightly-coupled multi-sensor fusion framework, which fuses the measurement from the LiDAR, inertial sensor, visual camera to achieve robust, accurate state estimation. Taking advantage of measurement from all individual sensors, our algorithm is robust enough to various visual failure, LiDAR-degenerated scenarios, and is able to run in real time on an on-board computation platform, as shown by extensive experiments conducted in indoor, outdoor, and mixed environment of different scale.