Vehicular Environment Identification Based on Channel State Information and Deep Learning

Author:

Ribouh Soheyb1ORCID,Sadli Rahmad2ORCID,Elhillali Yassin2,Rivenq Atika2,Hadid Abdenour3ORCID

Affiliation:

1. Normandie Université Rouen, LITIS (Laboratoire d’Informatique, de Traitement de l’Information et des Systèmes), Av. de l’Université le Madrillet, 76801 Saint Etienne du Rouvray, France

2. Département d’Opto-Acousto-Électronique, DOAE, Institut d’Électronique de Microélectronique et de Nanotechnologie, IEMN, Université Polytechnique Hauts-de-France, UMR 8520, 59300 Valenciennes, France

3. Sorbonne Center for Artificial Intelligence, Sorbonne University Abu Dhabi, Abu Dhabi P.O. Box 38044, United Arab Emirates

Abstract

This paper presents a novel vehicular environment identification approach based on deep learning. It consists of exploiting the vehicular wireless channel characteristics in the form of Channel State Information (CSI) in the receiver side of a connected vehicle in order to identify the environment type in which the vehicle is driving, without any need to implement specific sensors such as cameras or radars. We consider environment identification as a classification problem, and propose a new convolutional neural network (CNN) architecture to deal with it. The estimated CSI is used as the input feature to train the model. To perform the identification process, the model is targeted for implementation in an autonomous vehicle connected to a vehicular network (VN). The proposed model is extensively evaluated, showing that it can reliably recognize the surrounding environment with high accuracy (96.48%). Our model is compared to related approaches and state-of-the-art classification architectures. The experiments show that our proposed model yields favorable performance compared to all other considered methods.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference38 articles.

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