Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot

In this paper, we propose a surface-identification system for stable humanoid-robot walking on various types of surfaces using force sensors mounted under the robot feet. For experimental identification analysis of the surface condition, we measured the sensor-output data using five different types...

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Main Authors: Sandip Bhattacharya, Aiwen Luo, Tapas Kumar Maiti, Sunandan Dutta, Yoshihiro Ochi, Mitiko Miura-Mattausch, Hans Jurgen Mattausch
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8861326/
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spelling doaj-3cd0fb9460b84d389e5a7b5a5d79f8d72021-03-30T00:34:34ZengIEEEIEEE Access2169-35362019-01-01714644314645610.1109/ACCESS.2019.29459838861326Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid RobotSandip Bhattacharya0Aiwen Luo1https://orcid.org/0000-0002-9158-8406Tapas Kumar Maiti2Sunandan Dutta3Yoshihiro Ochi4Mitiko Miura-Mattausch5Hans Jurgen Mattausch6HiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanHiSIM Research Center, Hiroshima University, Hiroshima, JapanIn this paper, we propose a surface-identification system for stable humanoid-robot walking on various types of surfaces using force sensors mounted under the robot feet. For experimental identification analysis of the surface condition, we measured the sensor-output data using five different types of test surfaces. To achieve fast dynamic recognition capability of changing surface conditions, we applied an overlapped sliding-window method for the incoming sensor-data stream to generate dynamically four distinguishable well-known features from the raw sensor data. The multi-class k-nearest-neighbor (MC-kNN) classifier rather than a binary classifier is used for online classification of the measured robot-walking pattern and classification-accuracy evaluation. Further, we combine the four studied feature descriptors into a fused multi-feature descriptor rather than invoking each feature descriptor independently, increasing the classification performance. Our analysis results verify that 90.4% maximum overall accuracy with 91.49% average precision can be achieved, demonstrating the realization of a better cost-performance trade-off than in other previous research works. The obtained results are useful for balancing the robot body through optimized controlling of the robot motors according to the recognized different surfaces during robot motion.https://ieeexplore.ieee.org/document/8861326/Humanoid robotforce sensorsliding-window methodmulti-class classificationsurface identificationwalking-pattern recognition
collection DOAJ
language English
format Article
sources DOAJ
author Sandip Bhattacharya
Aiwen Luo
Tapas Kumar Maiti
Sunandan Dutta
Yoshihiro Ochi
Mitiko Miura-Mattausch
Hans Jurgen Mattausch
spellingShingle Sandip Bhattacharya
Aiwen Luo
Tapas Kumar Maiti
Sunandan Dutta
Yoshihiro Ochi
Mitiko Miura-Mattausch
Hans Jurgen Mattausch
Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
IEEE Access
Humanoid robot
force sensor
sliding-window method
multi-class classification
surface identification
walking-pattern recognition
author_facet Sandip Bhattacharya
Aiwen Luo
Tapas Kumar Maiti
Sunandan Dutta
Yoshihiro Ochi
Mitiko Miura-Mattausch
Hans Jurgen Mattausch
author_sort Sandip Bhattacharya
title Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
title_short Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
title_full Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
title_fullStr Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
title_full_unstemmed Surface-Property Recognition With Force Sensors for Stable Walking of Humanoid Robot
title_sort surface-property recognition with force sensors for stable walking of humanoid robot
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description In this paper, we propose a surface-identification system for stable humanoid-robot walking on various types of surfaces using force sensors mounted under the robot feet. For experimental identification analysis of the surface condition, we measured the sensor-output data using five different types of test surfaces. To achieve fast dynamic recognition capability of changing surface conditions, we applied an overlapped sliding-window method for the incoming sensor-data stream to generate dynamically four distinguishable well-known features from the raw sensor data. The multi-class k-nearest-neighbor (MC-kNN) classifier rather than a binary classifier is used for online classification of the measured robot-walking pattern and classification-accuracy evaluation. Further, we combine the four studied feature descriptors into a fused multi-feature descriptor rather than invoking each feature descriptor independently, increasing the classification performance. Our analysis results verify that 90.4% maximum overall accuracy with 91.49% average precision can be achieved, demonstrating the realization of a better cost-performance trade-off than in other previous research works. The obtained results are useful for balancing the robot body through optimized controlling of the robot motors according to the recognized different surfaces during robot motion.
topic Humanoid robot
force sensor
sliding-window method
multi-class classification
surface identification
walking-pattern recognition
url https://ieeexplore.ieee.org/document/8861326/
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