弹道
计算机科学
工作(物理)
人工神经网络
期限(时间)
循环神经网络
运动(物理)
短时记忆
车辆动力学
人工智能
模拟
机器学习
实时计算
工程类
汽车工程
机械工程
物理
量子力学
天文
作者
Florent Altché,Arnaud de La Fortelle
标识
DOI:10.1109/itsc.2017.8317913
摘要
In order to drive safely and efficiently on public roads, autonomous vehicles will have to understand the intentions of surrounding vehicles, and adapt their own behavior accordingly. If experienced human drivers are generally good at inferring other vehicles' motion up to a few seconds in the future, most current Advanced Driving Assistance Systems (ADAS) are unable to perform such medium-term forecasts, and are usually limited to high-likelihood situations such as emergency braking. In this article, we present a first step towards consistent trajectory prediction by introducing a long short-term memory (LSTM) neural network, which is capable of accurately predicting future longitudinal and lateral trajectories for vehicles on highway. Unlike previous work focusing on a low number of trajectories collected from a few drivers, our network was trained and validated on the NGSIM US-101 dataset, which contains a total of 800 hours of recorded trajectories in various traffic densities, representing more than 6000 individual drivers.
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