Human Being Detection from UWB NLOS Signals: Accuracy and Generality of Advanced Machine Learning Models.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

This paper studies the problem of detecting human beings in non-line-of-sight (NLOS) conditions using an ultra-wideband radar. We perform an extensive measurement campaign in realistic environments, considering different body orientations, the obstacles' materials, and radar-obstacle distances. We examine two main scenarios according to the radar position: (i) placed on top of a mobile cart; (ii) handheld at different heights. We empirically analyze and compare several input representations and machine learning (ML) methods-supervised and unsupervised, symbolic and non-symbolic-according to both their accuracy in detecting NLOS human beings and their adaptability to unseen cases. Our study proves the effectiveness and flexibility of modern ML techniques, avoiding environment-specific configurations and benefiting from knowledge transference. Unlike traditional TLC approaches, ML allows for generalization, overcoming limits due to unknown or only partially known observation models and insufficient labeled data, which usually occur in emergencies or in the presence of time/cost constraints.

Authors

  • Gianluca Moro
    Department of Computer Science and Engineering (DISI), University of Bologna, 40126 Bologna, Italy.
  • Federico Di Luca
    Department of Electrical, Electronic, and Information Engineering (DEI), University of Bologna, 47521 Cesena, Italy.
  • Davide Dardari
    Department of Electrical, Electronic, and Information Engineering (DEI), University of Bologna, 47521 Cesena, Italy.
  • Giacomo Frisoni
    Department of Computer Science and Engineering (DISI), University of Bologna, 40126 Bologna, Italy.