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An enhanced motion planning approach by integrating driving heterogeneity and long-term trajectory prediction for automated driving systems

2 August 2023
Ni Dong
Shuming Chen
Yina Wu
Yiheng Feng
Xiaobo Liu
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Abstract

Navigating automated driving systems (ADSs) through complex driving environments is difficult. Predicting the driving behavior of surrounding human-driven vehicles (HDVs) is a critical component of an ADS. This paper proposes an enhanced motion-planning approach for an ADS in a highway-merging scenario. The proposed enhanced approach utilizes the results of two aspects: the driving behavior and long-term trajectory of surrounding HDVs, which are coupled using a hierarchical model that is used for the motion planning of an ADS to improve driving safety.

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