Probabilistic Traffic Motion Labeling for Multi-Modal Vehicle Route Prediction

  • The prediction of the motion of traffic participants is a crucial aspect for the research and development of Automated Driving Systems (ADSs). Recent approaches are based on multi-modal motion prediction, which requires the assignment of a probability score to each of the multiple predicted motion hypotheses. However, there is a lack of ground truth for this probability score in the existing datasets. This implies that current Machine Learning (ML) models evaluate the multiple predictions by comparing them with the single real trajectory labeled in the dataset. In this work, a novel data-based method named Probabilistic Traffic Motion Labeling (PROMOTING) is introduced in order to (a) generate probable future routes and (b) estimate their probabilities. PROMOTING is presented with the focus on urban intersections. The generation of probable future routes is (a) based on a real traffic dataset and consists of two steps: first, a clustering of intersections with similar road topology, and second, a clustering of similar routes that areThe prediction of the motion of traffic participants is a crucial aspect for the research and development of Automated Driving Systems (ADSs). Recent approaches are based on multi-modal motion prediction, which requires the assignment of a probability score to each of the multiple predicted motion hypotheses. However, there is a lack of ground truth for this probability score in the existing datasets. This implies that current Machine Learning (ML) models evaluate the multiple predictions by comparing them with the single real trajectory labeled in the dataset. In this work, a novel data-based method named Probabilistic Traffic Motion Labeling (PROMOTING) is introduced in order to (a) generate probable future routes and (b) estimate their probabilities. PROMOTING is presented with the focus on urban intersections. The generation of probable future routes is (a) based on a real traffic dataset and consists of two steps: first, a clustering of intersections with similar road topology, and second, a clustering of similar routes that are driven in each cluster from the first step. The estimation of the route probabilities is (b) based on a frequentist approach that considers how traffic participants will move in the future given their motion history. PROMOTING is evaluated with the publicly available Lyft database. The results show that PROMOTING is an appropriate approach to estimate the probabilities of the future motion of traffic participants in urban intersections. In this regard, PROMOTING can be used as a labeling approach for the generation of a labeled dataset that provides a probability score for probable future routes. Such a labeled dataset currently does not exist and would be highly valuable for ML approaches with the task of multi-modal motion prediction. The code is made open source.show moreshow less

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Metadaten
Author:Alberto Flores FernándezORCiD, Jonas WurstORCiD, Eduardo Sánchez MoralesORCiD, Michael BotschORCiD, Christian FacchiORCiD, Andrés García HigueraORCiD
Language:English
Document Type:Article
Year of first Publication:2022
published in (English):Sensors
Publisher:MDPI
Place of publication:Basel
ISSN:1424-8220
Volume:22
Issue:12
Pages:24
Article Number:4498
Review:peer-review
Open Access:ja
Version:published
Tag:PROMOTING; automated driving systems; autonomous vehicles; machine learning; motion prediction; multi-modal; real traffic data; route prediction
URN:urn:nbn:de:bvb:573-24341
Related Identifier:https://doi.org/10.3390/s22124498
Faculties / Institutes / Organizations:Fakultät Informatik
Fakultät Elektro- und Informationstechnik
CARISSMA Institute of Automated Driving (C-IAD)
CARISSMA Institute of Electric, Connected and Secure Mobility (C-ECOS)
AImotion Bavaria
Licence (German):License Logo Creative Commons BY 4.0
Release Date:2022/06/15