원문정보
초록
영어
In the present scenario, the self-driving industry is in the commercialization stage of the consumer market. There are no longer any difficulties simply detecting an object and performing certain tasks in terms of vehicle control and navigation. Nevertheless, unexpected problems arise due to occlusion, unbalanced ground, and bad weather. This paper presents a method for correcting inaccurate distance recognition results when a vehicle vibrates against the unbalanced ground. The proposed method follows a pipeline of preprocessing techniques such as LiDAR-camera calibration, 3D point cloud data acquisition from LiDAR and camera to model 3D plane equations in RANSAC. The distance error is corrected by estimating the orientations from an IMU sensor in real-time and by assessing Rotation and translation in accordance with the pose changes of the vehicle.
목차
I. INTRODUCTION
II. METHOD
A. Estimating Distance using LiDAR-Camera calibration
B. Prediction of the distance using car-pose simulation
III. EXPERIMENTS
IV. CONCLUSION
ACKNOWLEDGMENT
REFERENCES