The integration of autonomous vehicles into urban and highway environments necessitates the development of robust and adaptable behavior planning systems. This study presents an innovative approach to address this challenge by utilizing a Monte-Carlo Tree Search (MCTS) based algorithm for autonomous driving behavior planning. The core objective is to leverage the balance between exploration and exploitation inherent in MCTS to facilitate intelligent driving decisions in complex scenarios. We introduce an MCTS-based algorithm tailored to the specific demands of autonomous driving. This involves the integration of carefully crafted cost functions, encompassing safety, comfort, and passability metrics, into the MCTS framework. The effectiven...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
Planning under social interactions with other agents is an essential problem for autonomous driving....
This study proposes a highway driving strategy for autonomous vehicles. First, a model predictive c...
This thesis investigates three different Monte Carlo tree search (MCTS) algorithms for optimizing ta...
Left-turning at unsignalized intersection is one of the most challenging tasks for urban automated d...
This literature review focuses on three important aspects of an autonomous car system: tracking (ass...
Predicting the states of the surrounding traffic is one of the major problems in automated driving. ...
This thesis presents a behavior planning algorithm for automated driving in urban environments with ...
As autonomous technologies in ground vehicle application begin to mature, there is a greater accepta...
Trajectory generation and prediction are two interwoven tasks that play important roles in planner e...
The longitudinal trajectory planning of connected and autonomous vehicle (CAV) has been widely studi...
Multi-modal behaviors exhibited by surrounding vehicles (SVs) can typically lead to traffic congesti...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Many current algorithms and approaches in autonomous driving attempt to solve the trajectory genera...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
Planning under social interactions with other agents is an essential problem for autonomous driving....
This study proposes a highway driving strategy for autonomous vehicles. First, a model predictive c...
This thesis investigates three different Monte Carlo tree search (MCTS) algorithms for optimizing ta...
Left-turning at unsignalized intersection is one of the most challenging tasks for urban automated d...
This literature review focuses on three important aspects of an autonomous car system: tracking (ass...
Predicting the states of the surrounding traffic is one of the major problems in automated driving. ...
This thesis presents a behavior planning algorithm for automated driving in urban environments with ...
As autonomous technologies in ground vehicle application begin to mature, there is a greater accepta...
Trajectory generation and prediction are two interwoven tasks that play important roles in planner e...
The longitudinal trajectory planning of connected and autonomous vehicle (CAV) has been widely studi...
Multi-modal behaviors exhibited by surrounding vehicles (SVs) can typically lead to traffic congesti...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Many current algorithms and approaches in autonomous driving attempt to solve the trajectory genera...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
Planning under social interactions with other agents is an essential problem for autonomous driving....
This study proposes a highway driving strategy for autonomous vehicles. First, a model predictive c...