Advancing Cycling Safety: On-Bike Alert System Utilizing Multi-Layer Radar Point Cloud Clustering for Coarse Object Classification

Author:

Omri Asma12ORCID,Benothman Noureddine3,Sayahi Sofiane2,Tlili Fethi4,Chaabane Ferdaous1,Besbes Hichem1

Affiliation:

1. COSIM Lab, Higher School of Communication of Tunis, University of Carthage, Ariana 2083, Tunisia

2. Innovation Department, ACTIA Engineering Services, Ariana 2083, Tunisia

3. IP Department, ACTIA Engineering Services, Ariana 2083, Tunisia

4. GRESCOM Lab, Higher School of Communication of Tunis, University of Carthage, Ariana 2083, Tunisia

Abstract

Cyclists are considered to be vulnerable road users (VRUs) and need protection from potential collisions with cars and other vehicles induced by unsafe driving, dangerous road conditions, or weak cycling infrastructure. Integrating mmWave radars into cycling safety measures presents an efficient solution to this problem given their compact size, low power consumption, and low cost compared to other sensors. This paper introduces an mmWave radar-based bike safety system designed to offer real-time alerts to cyclists. The system consists of a low-power radar sensor affixed to the bicycle, connected to a micro-controller, and delivering a preliminary classification of detected obstacles. An efficient two-level clustering based on the accumulation of radar point clouds from multiple frames with a temporal projection from previous frames into the current frame is proposed. The clustering is followed by a coarse classification algorithm in which we use relevant features extracted from the resulting clusters. An annotated RadBike dataset composed of radar point cloud data synchronized with RGB camera images is developed to evaluate our system. The two-level clustering outperforms the DBSCAN algorithm, achieving a v-measure score of 0.91, compared to 0.88 with classical DBSCAN. Different classifiers, including decision trees, random forests, support vector machines (SVMs), and AdaBoost, have been assessed, with an overall accuracy of 87% for the three main object classes: four-wheeled, two-wheeled, and others. The system has the ability to improve rider safety on the road and substantially reduce the frequency of incidents involving cyclists.

Funder

ACTIA Engineering Services

Publisher

MDPI AG

Reference38 articles.

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3. Englund, C., Clasen, H., Bui, T.H., Lindström, D., Andersson, J., Englund, C., Clasen, H., and Lindström, D. (2019, January 21–25). Radar system for bicycle—A new measure for safety. Proceedings of the ITS World Congress, Singapore.

4. Degen, C., Domnik, C., Kürten, A., Meuleners, M., Notz, M., Pohle-Fröhlich, R., and Naroska, E. (2019, January 26–28). Driver Assistance System for Pedelecs. Proceedings of the 2019 20th International Radar Symposium (IRS), Ulm, Germany.

5. Dorn, C., Kurin, T., Erhardt, S., Lurz, F., and Hagelauer, A. (2022, January 16–19). Signal Processing for Low-Power and Low-Cost Radar Systems in Bicycle Safety Applications. Proceedings of the 2022 IEEE Topical Conference on Wireless Sensors and Sensor Networks (WiSNeT), Las Vegas, NV, USA.

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