Machine Learning Methods for Radar-Based People Detection and Tracking by Mobile Robots

This paper reports a machine learning approach for people detection and tracking in indoor environments using a compact radar system deployed by a mobile robot. The set-up described in the paper includes a series of experiments carried out in an indoor scenario involving walking people and dummies representative of other moving objects. In these experiments, distinct learning models (a neural network and a random forest) were explored with different combinations of radar features to achieve person versus non-person classification.

[1]  Hiroyoshi Yamada,et al.  Indoor human detection by using quasi-MIMO Doppler radar , 2015, 2015 International Workshop on Antenna Technology (iWAT).

[2]  Lino Marques,et al.  Using Radar for Grid Based Indoor Mapping , 2019, 2019 IEEE International Conference on Autonomous Robot Systems and Competitions (ICARSC).

[3]  Moeness G. Amin,et al.  Radar-Based Human-Motion Recognition With Deep Learning: Promising applications for indoor monitoring , 2019, IEEE Signal Processing Magazine.

[4]  Hermann Rohling,et al.  Pedestrian recognition based on 24 GHz radar sensors , 2010, 11-th INTERNATIONAL RADAR SYMPOSIUM.

[5]  André Bourdoux,et al.  Indoor tracking of multiple persons with a 77 GHz MIMO FMCW radar , 2017, 2017 European Radar Conference (EURAD).

[6]  Eijiro Takeuchi,et al.  Localization and Place Recognition Using an Ultra-Wide Band (UWB) Radar , 2013, FSR.

[7]  Santiago Mancheno,et al.  Automotive FMCW Radar Development and Verification Methods , 2018 .

[8]  Hans-Peter Kriegel,et al.  A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise , 1996, KDD.