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Crane Guidance Gesture Recognition using Fuzzy Logic and Kalman Filtering

Fuzzy Hybrid Computing in Construction Engineering and Management

ISBN: 978-1-78743-869-9, eISBN: 978-1-78743-868-2

Publication date: 5 October 2018

Abstract

This chapter presents a novel human arm gesture tracking and recognition technique based on fuzzy logic and nonlinear Kalman filtering with applications in crane guidance. A Kinect visual sensor and a Myo armband sensor are jointly utilised to perform data fusion to provide more accurate and reliable information on Euler angles, angular velocity, linear acceleration and electromyography data in real time. Dynamic equations for arm gesture movement are formulated with Newton–Euler equations based on Denavit–Hartenberg parameters. Nonlinear Kalman filtering techniques, including the extended Kalman filter and the unscented Kalman filter, are applied in order to perform reliable sensor fusion, and their tracking accuracies are compared. A Sugeno-type fuzzy inference system is proposed for arm gesture recognition. Hardware experiments have shown the efficacy of the proposed method for crane guidance applications.

Keywords

Citation

Wang, X. and Gordon, C. (2018), "Crane Guidance Gesture Recognition using Fuzzy Logic and Kalman Filtering", Fayek, A.R. (Ed.) Fuzzy Hybrid Computing in Construction Engineering and Management, Emerald Publishing Limited, Leeds, pp. 451-473. https://doi.org/10.1108/978-1-78743-868-220181013

Publisher

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Emerald Publishing Limited

Copyright © 2018 Emerald Publishing Limited