Title :
Dynamic Probabilistic Drivability Maps for Lane Change and Merge Driver Assistance
Author :
Sivaraman, Sayanan ; Trivedi, Mohan Manubhai
Author_Institution :
Lab. for Intell. & Safe Automobiles, Univ. of California, San Diego, La Jolla, CA, USA
Abstract :
In this paper, we present a novel probabilistic compact representation of the on-road environment, i.e., the dynamic probabilistic drivability map (DPDM), and demonstrate its utility for predictive lane change and merge (LCM) driver assistance during highway and urban driving. The DPDM is a flexible representation and readily accepts data from a variety of sensor modalities to represent the on-road environment as a spatially coded data structure, encapsulating spatial, dynamic, and legal information. Using the DPDM, we develop a general predictive system for LCMs. We formulate the LCM assistance system to solve for the minimum-cost solution to merge or change lanes, which is solved efficiently using dynamic programming over the DPDM. Based on the DPDM, the LCM system recommends the required acceleration and timing to safely merge or change lanes with minimum cost. System performance has been extensively validated using real-world on-road data, including urban driving, on-ramp merges, and both dense and free-flow highway conditions.
Keywords :
data structures; driver information systems; dynamic programming; probability; sensors; DPDM; dynamic information encapsulation; dynamic probabilistic drivability maps; dynamic programming; free-flow highway conditions; general predictive system; highway driving; legal information encapsulation; minimum-cost solution; on-road environment; predictive LCM driver assistance; predictive lane change and merge driver assistance; probabilistic compact representation; sensor modalities; spatial information encapsulation; spatially coded data structure; urban driving; Laser radar; Probabilistic logic; Radar tracking; Road transportation; Vehicle dynamics; Vehicles; Dynamic programming; lane change; merge; predictive driver assistance; probabilistic modeling;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2014.2309055