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Open-World Learning for Traffic Scenarios Categorisation

journal contribution
posted on 2024-11-03, 09:50 authored by Lakshman Balasubramanian, Jonas Wurst, Michael Botsch, Ke DengKe Deng
Categorisation of traffic scenarios is an important component of scenario-based development and validation of automated vehicles. This problem requires an open-world learning approach but most of the machine learning methods used for traffic scenario categorisation work under the closed-world assumption. A closed-world model will classify all the inputs to one of the classes from the training data. An open-world learning method can identify, collect and cluster unknown traffic scenarios and incrementally add new scenario categories to the already existing ones. In this work, a hierarchical architecture for open-world learning method is proposed. The open-world architecture consists of the following components: an open-set recognition model, storage buffer, outlier detection, class-conditioned generative replay model, and clustering method. The components in the architecture contain novel machine learning approaches to address the challenging open-world learning tasks, e.g., Extreme Value Theory (EVT) for open-set recognition, Random Forest Activation Patterns (RFAPs) for clustering, class-conditioned generative models for replay, and self-supervised pre-training for feature generation. The proposed architecture is tested using real-world and simulation-based datasets. The results show the performance advantages of the proposed method. Also, extensive analysis of each component of the hierarchical open-world architecture underlines their importance in the overall architecture.

History

Journal

IEEE Transactions on Intelligent Vehicles

Volume

8

Issue

5

Start page

3506

End page

3521

Total pages

16

Publisher

IEEE

Place published

United States

Language

English

Copyright

© 2023 IEEE

Former Identifier

2006124602

Esploro creation date

2023-08-24

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