Real-time object detection based on fusion of vision and point-cloud interpolated LiDAR

Citations

SCOPUS

11

초록

This paper aims to detect objects from BEV (Bird-Eye View) images by utilizing multi-source data from three-dimensional light detection and ranging (3D LiDAR) and a camera. Object detection via the camera is implemented by using a single-stage detector, YOLO-v3, and the distance of the detected objects is estimated by performing camera calibration with the 3D LiDAR. BEV images for sensor fusion are generated using LiDAR data. Sensor fusion estimates the distance of objects detected by the camera and enhances the features in BEV images using point interpolation based on point cloud data obtained by the 3D LiDAR. Object detection is performed by applying the proposed deep neural network on enhanced BEV images. Evaluation is performed using the KITTI validation dataset and a privately collected dataset, which includes images obtained on actual roads. © ICROS 2020.

키워드

BEV object detectionCamera-LiDAR calibrationLiDAR voxelizationSensor fusion
제목
Real-time object detection based on fusion of vision and point-cloud interpolated LiDAR
저자
Lee, Jong-SeoRyu, ChoonwooKim, Hakil
DOI
10.5302/J.ICROS.2020.20.0025
발행일
2020
유형
Article
저널명
제어.로봇.시스템학회 논문지
26
6
페이지
469 ~ 478