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Comparison of different hyperparameter optimization methods on driving behavior recognition

11 pagesPublished: July 12, 2024

Abstract

The prediction and recognition models of driving behaviors are often based on ma- chine learning approaches. These models are required for the growth of advanced driving assistance systems. The performance of the model depends on the optimal parameters, hy- perparameters, and model structure. In the present study, hyperparameters of a previously developed model (neural network-based state machine model) are optimized for the lane changing recognition. Two methods are considered for the hyperparameter optimization: Bayesian optimization and Genetic algorithm (GA). Three lane changing behaviors are estimated. Real human driving data generated using a driving simulator are used for the parameterization. The aim is to compare the model’s recognition performance based on the two methods. Furthermore, comparisons between the models with optimized hyper- parameters and the original model (without hyperparameter optimization) are performed. The results show that the performance based on the Bayesian optimization is better than GA, while the original model still outperforms others.

Keyphrases: Advanced Driving Assistance Systems, Bayesian optimization, Driving behavior recognition, Genetic Algorithm, neural network, state machine

In: Kenneth Baclawski, Michael Kozak, Kirstie Bellman, Giuseppe D'Aniello, Alicia Ruvinsky and Candida Da Silva Ferreira Barreto (editors). Proceedings of Conference on Cognitive and Computational Aspects of Situation Management 2023, vol 102, pages 33--43

Links:
BibTeX entry
@inproceedings{CogSIMA2023:Comparison_of_different_hyperparameter,
  author    = {Ruth David and Dirk S\textbackslash{}"offker},
  title     = {Comparison of different hyperparameter optimization methods on driving behavior recognition},
  booktitle = {Proceedings of Conference on Cognitive and Computational Aspects of Situation Management 2023},
  editor    = {Kenneth Baclawski and Michael Kozak and Kirstie Bellman and Giuseppe D'Aniello and Alicia Ruvinsky and Candida Da Silva Ferreira Barreto},
  series    = {EPiC Series in Computing},
  volume    = {102},
  pages     = {33--43},
  year      = {2024},
  publisher = {EasyChair},
  bibsource = {EasyChair, https://easychair.org},
  issn      = {2398-7340},
  url       = {https://easychair.org/publications/paper/NSKB},
  doi       = {10.29007/41f5}}
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