Analysis of Machine Learning Techniques Applied to Sensory Detection of Vehicles in Intelligent Crosswalks
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Abstract
Improving road safety through artificial intelligence-based systems is now crucial turning
smart cities into a reality. Under this highly relevant and extensive heading, an approach is proposed
to improve vehicle detection in smart crosswalks using machine learning models. Contrarily to
classic fuzzy classifiers, machine learning models do not require the readjustment of labels that
depend on the location of the system and the road conditions. Several machine learning models
were trained and tested using real traffic data taken from urban scenarios in both Portugal and Spain.
These include random forest, time-series forecasting, multi-layer perceptron, support vector machine,
and logistic regression models. A deep reinforcement learning agent, based on a state-of-the-art
double-deep recurrent Q-network, is also designed and compared with the machine learning models
just mentioned. Results show that the machine learning models can efficiently replace the classic
fuzzy classifier.
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Bibliographic citation
Lozano Domínguez, J. M., Al-Tam, F., Mateo Sanguino, T. de J., & Correia, N. (2020). Analysis of Machine Learning Techniques Applied to Sensory Detection of Vehicles in Intelligent Crosswalks. Sensors, 20(21), 6019. DOI: https://doi.org/10.3390/s20216019













