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A Fleet Learning Architecture for Enhanced Behavior Predictions during Challenging External Conditions

机译:在挑战外部条件下提高行为预测的舰队学习架构

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Already today, driver assistance systems help to make daily traffic more comfortable and safer. However, there are still situations that are quite rare but are hard to handle at the same time. In order to cope with these situations and to bridge the gap towards fully automated driving, it becomes necessary to not only collect enormous amounts of data but rather the right ones. This data can be used to develop and validate the systems through machine learning and simulation pipelines. Along this line this paper presents a fleet learning-based architecture that enables continuous improvements of systems predicting the movement of surrounding traffic participants. Moreover, the presented architecture is applied to a testing vehicle in order to prove the fundamental feasibility of the system. Finally, it is shown that the system collects meaningful data which are helpful to improve the underlying prediction systems.
机译:司机援助系统已经有助于每日交通更加舒适,更安全。但是,仍有静止的情况非常罕见,但难以同时处理。为了应对这些情况并将差距弥合到全自动驾驶,因此不仅需要收集大量数据,而且是正确的。该数据可用于通过机器学习和仿真管道开发和验证系统。沿着这一点,本文提出了一种基于车队的学习架构,可以持续改进预测周围的交通参与者运动的系统。此外,所提出的架构应用于测试车辆,以证明系统的基本可行性。最后,显示系统收集有意义的数据,这有助于改善底层预测系统。

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