Displacement Estimation Based on Optical and Inertial Sensor Fusion

This article aims to develop a system capable of estimating the displacement of a moving object with the usage of a relatively cheap and easy to apply sensors. There is a growing need for such systems, not only for robots, but also, for instance, pedestrian navigation. In this paper, the theory for...

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Main Authors: Tomasz Ursel, Michał Olinski
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Sensors
Subjects:
ZV
OFS
Online Access:https://www.mdpi.com/1424-8220/21/4/1390
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spelling doaj-b8859dc543f4470dbf95e65514c8b78e2021-02-18T00:01:02ZengMDPI AGSensors1424-82202021-02-01211390139010.3390/s21041390Displacement Estimation Based on Optical and Inertial Sensor FusionTomasz Ursel0Michał Olinski1Faculty of Mechanical Engineering, Department of Fundamentals of Machine Design and Mechatronic Systems K61W10D07, Wroclaw University of Science and Technology, Łukasiewicza St. 7/9, 50-371 Wroclaw, PolandFaculty of Mechanical Engineering, Department of Fundamentals of Machine Design and Mechatronic Systems K61W10D07, Wroclaw University of Science and Technology, Łukasiewicza St. 7/9, 50-371 Wroclaw, PolandThis article aims to develop a system capable of estimating the displacement of a moving object with the usage of a relatively cheap and easy to apply sensors. There is a growing need for such systems, not only for robots, but also, for instance, pedestrian navigation. In this paper, the theory for this idea, including data postprocessing algorithms for a MEMS accelerometer and an optical flow sensor (OFS), as well as the developed complementary filter applied for sensor fusion, are presented. In addition, a vital part of the accelerometer’s algorithm, the zero velocity states detection, is implemented. It is based on analysis of the acceleration’s signal and further application of acceleration symmetrization, greatly improving the obtained displacement. A test stand with a linear guide and motor enabling imposing a specified linear motion is built. The results of both sensors’ testing suggest that the displacement estimated by each of them is highly correct. Fusion of the sensors’ data gives even better outcomes, especially in cases with external disturbance of OFS. The comparative evaluation of estimated linear displacements, in each case related to encoder data, confirms the algorithms’ operation correctness and proves the chosen sensors’ usefulness in the development of a linear displacement measuring system.https://www.mdpi.com/1424-8220/21/4/1390stationary statezero velocityZVaccelerometeroptical-flow sensorOFS
collection DOAJ
language English
format Article
sources DOAJ
author Tomasz Ursel
Michał Olinski
spellingShingle Tomasz Ursel
Michał Olinski
Displacement Estimation Based on Optical and Inertial Sensor Fusion
Sensors
stationary state
zero velocity
ZV
accelerometer
optical-flow sensor
OFS
author_facet Tomasz Ursel
Michał Olinski
author_sort Tomasz Ursel
title Displacement Estimation Based on Optical and Inertial Sensor Fusion
title_short Displacement Estimation Based on Optical and Inertial Sensor Fusion
title_full Displacement Estimation Based on Optical and Inertial Sensor Fusion
title_fullStr Displacement Estimation Based on Optical and Inertial Sensor Fusion
title_full_unstemmed Displacement Estimation Based on Optical and Inertial Sensor Fusion
title_sort displacement estimation based on optical and inertial sensor fusion
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-02-01
description This article aims to develop a system capable of estimating the displacement of a moving object with the usage of a relatively cheap and easy to apply sensors. There is a growing need for such systems, not only for robots, but also, for instance, pedestrian navigation. In this paper, the theory for this idea, including data postprocessing algorithms for a MEMS accelerometer and an optical flow sensor (OFS), as well as the developed complementary filter applied for sensor fusion, are presented. In addition, a vital part of the accelerometer’s algorithm, the zero velocity states detection, is implemented. It is based on analysis of the acceleration’s signal and further application of acceleration symmetrization, greatly improving the obtained displacement. A test stand with a linear guide and motor enabling imposing a specified linear motion is built. The results of both sensors’ testing suggest that the displacement estimated by each of them is highly correct. Fusion of the sensors’ data gives even better outcomes, especially in cases with external disturbance of OFS. The comparative evaluation of estimated linear displacements, in each case related to encoder data, confirms the algorithms’ operation correctness and proves the chosen sensors’ usefulness in the development of a linear displacement measuring system.
topic stationary state
zero velocity
ZV
accelerometer
optical-flow sensor
OFS
url https://www.mdpi.com/1424-8220/21/4/1390
work_keys_str_mv AT tomaszursel displacementestimationbasedonopticalandinertialsensorfusion
AT michałolinski displacementestimationbasedonopticalandinertialsensorfusion
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