SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data

This paper presents the use of eye tracking data in Magnetic AngularRate Gravity (MARG)-sensor based head orientation estimation. The approach presented here can be deployed in any motion measurement that includes MARG and eye tracking sensors (e.g., rehabilitation robotics or medical diagnostics)....

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Main Authors: Lukas Wöhle, Marion Gebhard
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sensors
Subjects:
IMU
Online Access:https://www.mdpi.com/1424-8220/20/10/2759
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spelling doaj-c7f18a82583e4cd8a5ee5f5f7a6489ca2020-11-25T03:04:41ZengMDPI AGSensors1424-82202020-05-01202759275910.3390/s20102759SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking DataLukas Wöhle0Marion Gebhard1Group of Sensors and Actuators, Department of Electrical Engineering and Applied Sciences,Westphalian University of Applied Sciences, 45877 Gelsenkirchen, GermanyGroup of Sensors and Actuators, Department of Electrical Engineering and Applied Sciences,Westphalian University of Applied Sciences, 45877 Gelsenkirchen, GermanyThis paper presents the use of eye tracking data in Magnetic AngularRate Gravity (MARG)-sensor based head orientation estimation. The approach presented here can be deployed in any motion measurement that includes MARG and eye tracking sensors (e.g., rehabilitation robotics or medical diagnostics). The challenge in these mostly indoor applications is the presence of magnetic field disturbances at the location of the MARG-sensor. In this work, eye tracking data (visual fixations) are used to enable zero orientation change updates in the MARG-sensor data fusion chain. The approach is based on a MARG-sensor data fusion filter, an online visual fixation detection algorithm as well as a dynamic angular rate threshold estimation for low latency and adaptive head motion noise parameterization. In this work we use an adaptation of Madgwicks gradient descent filter for MARG-sensor data fusion, but the approach could be used with any other data fusion process. The presented approach does not rely on additional stationary or local environmental references and is therefore self-contained. The proposed system is benchmarked against a Qualisys motion capture system, a gold standard in human motion analysis, showing improved heading accuracy for the MARG-sensor data fusion up to a factor of 0.5 while magnetic disturbance is present.https://www.mdpi.com/1424-8220/20/10/2759data fusionMARGIMUeye trackerself-containedhead motion measurement
collection DOAJ
language English
format Article
sources DOAJ
author Lukas Wöhle
Marion Gebhard
spellingShingle Lukas Wöhle
Marion Gebhard
SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
Sensors
data fusion
MARG
IMU
eye tracker
self-contained
head motion measurement
author_facet Lukas Wöhle
Marion Gebhard
author_sort Lukas Wöhle
title SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
title_short SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
title_full SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
title_fullStr SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
title_full_unstemmed SteadEye-Head—Improving MARG-Sensor Based Head Orientation Measurements Through Eye Tracking Data
title_sort steadeye-head—improving marg-sensor based head orientation measurements through eye tracking data
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-05-01
description This paper presents the use of eye tracking data in Magnetic AngularRate Gravity (MARG)-sensor based head orientation estimation. The approach presented here can be deployed in any motion measurement that includes MARG and eye tracking sensors (e.g., rehabilitation robotics or medical diagnostics). The challenge in these mostly indoor applications is the presence of magnetic field disturbances at the location of the MARG-sensor. In this work, eye tracking data (visual fixations) are used to enable zero orientation change updates in the MARG-sensor data fusion chain. The approach is based on a MARG-sensor data fusion filter, an online visual fixation detection algorithm as well as a dynamic angular rate threshold estimation for low latency and adaptive head motion noise parameterization. In this work we use an adaptation of Madgwicks gradient descent filter for MARG-sensor data fusion, but the approach could be used with any other data fusion process. The presented approach does not rely on additional stationary or local environmental references and is therefore self-contained. The proposed system is benchmarked against a Qualisys motion capture system, a gold standard in human motion analysis, showing improved heading accuracy for the MARG-sensor data fusion up to a factor of 0.5 while magnetic disturbance is present.
topic data fusion
MARG
IMU
eye tracker
self-contained
head motion measurement
url https://www.mdpi.com/1424-8220/20/10/2759
work_keys_str_mv AT lukaswohle steadeyeheadimprovingmargsensorbasedheadorientationmeasurementsthrougheyetrackingdata
AT mariongebhard steadeyeheadimprovingmargsensorbasedheadorientationmeasurementsthrougheyetrackingdata
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