This paper investigates the processing of Frequency Modulated-Continuos Wave (FM-CW) radar signals for vehicle classification. In the last years deep learning has gained interest in several scientific fields and signal processing is not one exception. In this work we address the recognition of the vehicle category using a Convolutional Neural Network (CNN) applied to range Doppler signature. The developed system first transforms the 1-dimensional signal into a 3-dimensional signal that is subsequently used as input to the CNN. When using the trained model to predict the vehicle category we obtain good performance.

Vehicle classification based on convolutional networks applied to FMCW radar signals / Capobianco, Samuele*; Facheris, Luca; Cuccoli, Fabrizio; Marinai, Simone. - ELETTRONICO. - 728:(2018), pp. 115-128. (Intervento presentato al convegno 1st Italian Conference on Traffic Mining applied to Police Activities, TRAP 2017 tenutosi a Roma nel 25-26 ottobre 2017) [10.1007/978-3-319-75608-0_9].

Vehicle classification based on convolutional networks applied to FMCW radar signals

Capobianco, Samuele;Facheris, Luca;Marinai, Simone
2018

Abstract

This paper investigates the processing of Frequency Modulated-Continuos Wave (FM-CW) radar signals for vehicle classification. In the last years deep learning has gained interest in several scientific fields and signal processing is not one exception. In this work we address the recognition of the vehicle category using a Convolutional Neural Network (CNN) applied to range Doppler signature. The developed system first transforms the 1-dimensional signal into a 3-dimensional signal that is subsequently used as input to the CNN. When using the trained model to predict the vehicle category we obtain good performance.
2018
Advances in Intelligent Systems and Computing
1st Italian Conference on Traffic Mining applied to Police Activities, TRAP 2017
Roma
25-26 ottobre 2017
Capobianco, Samuele*; Facheris, Luca; Cuccoli, Fabrizio; Marinai, Simone
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1149129
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