Locomotion Strategy Selection for a Hybrid Mobile Robot Using Time of Flight Depth Sensor

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Date

2015-03-22

Authors

Saudabayev, Artur
Kungozhin, Farabi
Nurseitov, Damir
Varol, Huseyin Atakan

Journal Title

Journal ISSN

Volume Title

Publisher

Journal of Sensors

Abstract

The performance of a mobile robot can be improved by utilizing different locomotion modes in various terrain conditions. This creates the necessity of having a supervisory controller capable of recognizing different terrain types and changing the locomotion mode of the robot accordingly. This work focuses on the locomotion strategy selection problem for a hybrid legged wheeled mobile robot. Supervisory control of the robot is accomplished by the terrain recognizer, which classifies depth images obtained from a commercial time of flight depth sensor and selects different locomotion mode subcontrollers based on the recognized terrain type. For the terrain recognizer, a database is generated consisting of five terrain classes (Uneven, LevelGround, StairUp, StairDown, and Nontraversable). Depth images are enhanced using confidence map based filtering. The accuracy of the terrain classification using Support VectorMachine classifier for the testing database in five-class terrain recognition problem is 97%. Real-world experiments assess the locomotion abilities of the quadruped and the capability of the terrain recognizer in real-time settings. The results of these experiments show depth images processed in real time using machine learning algorithms can be used for the supervisory control of hybrid robots with legged andwheeled locomotion capabilities.

Description

Keywords

mobile robot, locomotion modes, robot, Support Vector Machine, hybrid, Flight Depth Sensor

Citation

Saudabayev Artur et al.(>3), 2015(22 March), Locomotion Strategy Selection for a Hybrid Mobile Robot Using Time of Flight Depth Sensor, Journal of Sensors, Volume 2015, Article ID 425732, 14 pages.

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