Back to Search Start Over

Measuring Similarity of Interactive Driving Behaviors Using Matrix Profile

Authors :
Lin, Qin
Wang, Wenshuo
Zhang, Yihuan
Dolan, John
Publication Year :
2019

Abstract

Understanding multi-vehicle interactive behaviors with temporal sequential observations is crucial for autonomous vehicles to make appropriate decisions in an uncertain traffic environment. On-demand similarity measures are significant for autonomous vehicles to deal with massive interactive driving behaviors by clustering and classifying diverse scenarios. This paper proposes a general approach for measuring spatiotemporal similarity of interactive behaviors using a multivariate matrix profile technique. The key attractive features of the approach are its superior space and time complexity, real-time online computing for streaming traffic data, and possible capability of leveraging hardware for parallel computation. The proposed approach is validated through automatically discovering similar interactive driving behaviors at intersections from sequential data.<br />Comment: ACC final version

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.12969
Document Type :
Working Paper