作者
Cheng Chang, Dongpu Cao, Long Chen, Kui Su, Kuifeng Su, Yuelong Su, Fei-Yue Wang, Jue Wang, Ping Wang, Junqing Wei, Gansha Wu, Xiangbin Wu, Huile Xu, Nanning Zheng, Li Li
发表日期
2022/10/19
期刊
IEEE Transactions on Intelligent Vehicles
出版商
IEEE
简介
Autonomous driving related researches require the analysis and usage of massive amounts of driving scenario data. Compared to raw data collected by sensors, scenario data provide a preliminary abstraction of driving tasks and processes, explicitly integrate information about the road environment and the dynamic and static attributes of traffic participants, making it easier to conduct task understanding and decision making. However, many existing driving scenario datasets have the following two problems. First, it is not clear which data fields need to be recorded for driving scenarios. The data storage formats and organization standards are inconsistent. Second, the datasets cannot establish driving scenario indexing effectively. Existing datasets are sparsely annotated and difficult to index, which is detrimental to data sampling and extraction for machine learning process, thus hindering efficient fusion and reuse …
引用总数
学术搜索中的文章
C Chang, D Cao, L Chen, K Su, K Su, Y Su, FY Wang… - IEEE Transactions on Intelligent Vehicles, 2022