Autonomous Cargo Bike Fleets – Approaches for AI-Based Trajectory Forecasts of Road Users

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY Transport and Telecommunication Journal Pub Date : 2023-02-01 DOI:10.2478/ttj-2023-0006
Stefan Sass, Markus Höfer, Michael Schmidt, S. Schmidt
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Abstract

Abstract Automated cargo bikes are intended to complement public transportation in a sharing concept and provide an alternative transportation option for people and goods. In highly automated driving without a seated user, real-time trajectory prediction of other road users is crucial for collision avoidance with other motor vehicles or vulnerable road users (VRU). For this purpose, moving obstacles are detected by environmental sensors and classified and tracked using object detection and tracking algorithms. The current and past position data as well as environmental information are used to predict future positions. In this paper, we present several AI-based trajectory prediction models that are specifically suited for this use case. Our focus is not only on the accuracy of trajectory prediction, but additionally on a robust, real-time and practical application. We consider models that can predict the trajectories with position estimation or distributions for position estimation for each time step in the future. For this aim, we present generative network structures based on Conditional Variational Autoencoder (CVAE) in different variants. After training, the models are integrated into our production system and their computation time is determined on the hardware we use.
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自动货运自行车车队——基于人工智能的道路使用者轨迹预测方法
自动货运自行车旨在补充公共交通的共享概念,为人员和货物提供另一种运输选择。在无人驾驶的高度自动驾驶中,其他道路使用者的实时轨迹预测对于避免与其他机动车辆或弱势道路使用者(VRU)的碰撞至关重要。为此,移动障碍物由环境传感器检测,并使用目标检测和跟踪算法进行分类和跟踪。当前和过去的位置数据以及环境信息被用来预测未来的位置。在本文中,我们提出了几个特别适合此用例的基于ai的轨迹预测模型。我们的重点不仅在于轨迹预测的准确性,还在于鲁棒性、实时性和实用性。我们考虑的模型可以预测轨迹与位置估计或分布的位置估计在未来的每一个时间步。为此,我们提出了基于条件变分自编码器(CVAE)的不同变体的生成网络结构。经过训练后,这些模型被集成到我们的生产系统中,它们的计算时间取决于我们使用的硬件。
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来源期刊
Transport and Telecommunication Journal
Transport and Telecommunication Journal TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.00
自引率
0.00%
发文量
21
审稿时长
35 weeks
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