An Interacting Multiple Model Approach for Target Intent Estimation at Urban Intersection for Application to Automated Driving Vehicle
  • Shin, Donghoon
  • Yi, Subin
  • Park, Kang-moon
  • Park, Manbok
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초록

Featured Application Motion Prediction, Target Intent Inference, Urban Intersection, Automated Driving. Abstract Research shows that urban intersections are a hotspot for traffic accidents which cause major human injuries. Predicting turning, passing, and stop maneuvers against surrounding vehicles is considered to be fundamental for advanced driver assistance systems (ADAS), or automated driving systems in urban intersections. In order to estimate the target intent in such situations, an interacting multiple model (IMM)-based intersection-target-intent estimation algorithm is proposed. A driver model is developed to represent the driver's maneuvering on the intersection using an IMM-based target intent classification algorithm. The performance of the intersection-target-intent estimation algorithm is examined through simulation studies. It is demonstrated that the intention of a target vehicle is successfully predicted based on observations at an individual intersection by proposed algorithms.

키워드

motion predictiontarget intent inferenceurban intersectionautomated drivingALGORITHMSTRACKING
제목
An Interacting Multiple Model Approach for Target Intent Estimation at Urban Intersection for Application to Automated Driving Vehicle
저자
Shin, DonghoonYi, SubinPark, Kang-moonPark, Manbok
DOI
10.3390/app10062138
발행일
2020-03
유형
Letter
저널명
APPLIED SCIENCES-BASEL
10
6