2020
DOI: 10.1177/0954407020906627
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Enable faster and smoother spatio-temporal trajectory planning for autonomous vehicles in constrained dynamic environment

Abstract: Trajectory planning is of vital importance to decision-making for autonomous vehicles. Currently, there are three popular classes of cost-based trajectory planning methods: sampling-based, graph-search-based, and optimization-based. However, each of them has its own shortcomings, for example, high computational expense for sampling-based methods, low resolution for graph-search-based methods, and lack of global awareness for optimization-based methods. It leads to one of the challenges for trajectory planning … Show more

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Cited by 33 publications
(12 citation statements)
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“…There is an additional 5-meter safety margin behind the cut-in vehicle. The closeloop longitudinal dynamics of the ego vehicle is simulated by a first-order dynamics with a time constant of 0.3 s. The corridors are generated with the algorithm presented in [13] and [12], respectively for general convex shape and trapezoidal shape corridors.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…There is an additional 5-meter safety margin behind the cut-in vehicle. The closeloop longitudinal dynamics of the ego vehicle is simulated by a first-order dynamics with a time constant of 0.3 s. The corridors are generated with the algorithm presented in [13] and [12], respectively for general convex shape and trapezoidal shape corridors.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…There is existing work on trajectory synthesis for autonomous driving [9]- [11]. However, these works only consider a "0 th " order view of the problem i.e.…”
Section: Related Workmentioning
confidence: 99%
“…Traditional hierarchical methods always decompose the problem into several parts like environment perception, path planning, and motion control, which are too complicated to design [1,2,17]. Instead, the structure of end-to-end autonomous driving is relatively simple and straightforward in that they directly map raw sensor data to vehicle control signals through deep neural network.…”
Section: End-to-end Autonomous Driving Architecturementioning
confidence: 99%