Abstract

Acquisition of patient kinematics in different environments plays an important role in the detection of risk situations such as fall detection in elderly patients, in rehabilitation of patients with injuries, and in the design of treatment plans for patients with neurological diseases. Received Signal Strength Indicator (RSSI) measurements in a Body Area Network (BAN), capture the signal power on a radio link. The main aim of this paper is to demonstrate the potential of utilizing RSSI measurements in assessment of human kinematic features, and to give methods to determine these features. RSSI measurements can be used for tracking different body parts' displacements on scales of a few centimeters, for classifying motion and gait patterns instead of inertial sensors, and to serve as an additional reference to other sensors, in particular inertial sensors. Criteria and analytical methods for body part tracking, kinematic motion feature extraction, and a Kalman filter model for aggregation of RSSI and inertial sensor were derived. The methods were verified by a set of experiments performed in an indoor environment. In the future, the use of RSSI measurements can help in continuous assessment of various kinematic features of patients during their daily life activities and enhance medical diagnosis accuracy with lower costs.

Highlights

  • Acquiring a patient’s kinematics and the characterization of his or her activity over time plays an important role in medicine [1]

  • We focus on three main techniques to exploit the Received Signal Strength Indicator (RSSI) measurements: track body part based on RSSI measurements only; extract kinematic features; and aggregation of RSSI measurements and other sensor modalities like IMU

  • RSSI measurements are unique in the sense that they are included in all Body Area Network (BAN) standards, and as such, they do not require additional hardware and software resources

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Summary

Introduction

Acquiring a patient’s kinematics and the characterization of his or her activity over time plays an important role in medicine [1]. Patient’s kinematic assessment includes estimation of different body parts’ position, velocity, and acceleration. The type of activity is more abstract, has a temporal characteristic, and can be divided to classes such as standing, moving from sitting to standing, walking, jumping, or lifting a bag. Non-wearable sensing modalities are used for motion acquisition. Among these techniques, the most common ones are based on optical, electromagnetic, and ultrasonic technologies. Optical technology is usually implemented by a video recording system and is commonly used in gait analysis laboratories [5]

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