Automated driving systems (ADS) have undergone a significant improvement in the last years. ADS and more precisely self-driving cars technologies will change the way we perceive and know the world of transportation systems in terms of user experience, mode choices and business models. The emerging field of Deep Learning (DL) has been successfully applied for the development of innovative ADS solutions. However, the attempt to single out the best deep neural network architecture and tuning its hyperparameters are all expensive processes, both in terms of time and computational resources. In this work, Bayesian optimization (BO) is used to optimize the hyperparameters of a Spatiotemporal-Long Short Term Memory (ST-LSTM) network with the aim to obtain an accurate model for the prediction of the steering angle in a ADS. BO was able to identify, within a limited number of trials, a model—namely BO_ST-LSTM—which resulted, on a public dataset, the most accurate when compared to classical end-to-end driving models.

Riboni, A., Ghioldi, N., Candelieri, A., Borrotti, M. (2022). Bayesian optimization and deep learning for steering wheel angle prediction. SCIENTIFIC REPORTS, 12(1) [10.1038/s41598-022-12509-6].

Bayesian optimization and deep learning for steering wheel angle prediction

Riboni, Alessandro
Primo
;
Candelieri, Antonio
Penultimo
;
Borrotti, Matteo
Ultimo
2022

Abstract

Automated driving systems (ADS) have undergone a significant improvement in the last years. ADS and more precisely self-driving cars technologies will change the way we perceive and know the world of transportation systems in terms of user experience, mode choices and business models. The emerging field of Deep Learning (DL) has been successfully applied for the development of innovative ADS solutions. However, the attempt to single out the best deep neural network architecture and tuning its hyperparameters are all expensive processes, both in terms of time and computational resources. In this work, Bayesian optimization (BO) is used to optimize the hyperparameters of a Spatiotemporal-Long Short Term Memory (ST-LSTM) network with the aim to obtain an accurate model for the prediction of the steering angle in a ADS. BO was able to identify, within a limited number of trials, a model—namely BO_ST-LSTM—which resulted, on a public dataset, the most accurate when compared to classical end-to-end driving models.
Articolo in rivista - Articolo scientifico
Automobile Driving; Bayes Theorem; Deep Learning; Neural Networks, Computer
English
24-mag-2022
2022
12
1
8739
open
Riboni, A., Ghioldi, N., Candelieri, A., Borrotti, M. (2022). Bayesian optimization and deep learning for steering wheel angle prediction. SCIENTIFIC REPORTS, 12(1) [10.1038/s41598-022-12509-6].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/399793
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