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In-Home Emergency Detection Using an Ambient Ultra-Wideband Radar Sensor and Deep Learning

Abstract

Human behavior analysis in indoor environments from ambient sensor data is one of the most challenging human-machine interaction research topics. In this paper, we present a deep learning-based novel approach for human posture recognition and emergency detection using an ultra-wideband radar sensor. The strength of this sensor is that it collects less privacy-related information than a regular camera. The sensor is installed on a mobile robot to observe a subject from a short distance. At first, raw data is collected from the sensor. Then, the data is used to train a Recurrent Neural Network (RNN) for modeling of different human activities and conditions, including normal and emergency conditions. Finally, the trained model is used for testing the model on new inputs. The experiments were performed using two datasets recorded in lab environments, and the proposed approach produced better recognition performance than the conventional ones. The proposed method can be applied in many prominent research fields (e.g., human-robot interaction) for different practical applications such as mobile robots for eldercare.

Category

Academic chapter

Language

English

Author(s)

Affiliation

  • SINTEF Digital / Sustainable Communication Technologies
  • University of Oslo

Year

2020

Publisher

IEEE (Institute of Electrical and Electronics Engineers)

Book

IEEE 10th International Conference on Ultrawideband and Ultrashort Impulse Signals (UWBUSIS)

ISBN

9781728173146

Page(s)

1089 - 1093

View this publication at Norwegian Research Information Repository