占用网格映射
占用率
激光雷达
计算机科学
网格
人工智能
融合
计算机视觉
深度学习
传感器融合
信息融合
遥感
地理
工程类
机器人
移动机器人
土木工程
语言学
哲学
大地测量学
作者
Harin Jang,Taehyun Kim,Kyungjae Ahn,Soo Jeon,Yeonsik Kang
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2024-04-29
卷期号:24 (9): 2828-2828
被引量:1
摘要
In the field of robotics and autonomous driving, dynamic occupancy grid maps (DOGMs) are typically used to represent the position and velocity information of objects. Although three-dimensional light detection and ranging (LiDAR) sensor-based DOGMs have been actively researched, they have limitations, as they cannot classify types of objects. Therefore, in this study, a deep learning-based camera-LiDAR sensor fusion technique is employed as input to DOGMs. Consequently, not only the position and velocity information of objects but also their class information can be updated, expanding the application areas of DOGMs. Moreover, unclassified LiDAR point measurements contribute to the formation of a map of the surrounding environment, improving the reliability of perception by registering objects that were not classified by deep learning. To achieve this, we developed update rules on the basis of the Dempster-Shafer evidence theory, incorporating class information and the uncertainty of objects occupying grid cells. Furthermore, we analyzed the accuracy of the velocity estimation using two update models. One assigns the occupancy probability only to the edges of the oriented bounding box, whereas the other assigns the occupancy probability to the entire area of the box. The performance of the developed perception technique is evaluated using the public nuScenes dataset. The developed DOGM with object class information will help autonomous vehicles to navigate in complex urban driving environments by providing them with rich information, such as the class and velocity of nearby obstacles.
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