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Attitude Estimation of a Biologically Inspired Robotic Housefly via Multimodal Sensor Fusion

Domenico Campolo, Luca Schenato, Lijuan Pi, Xinyan Deng, Eugenio Guglielmelli

Year
2009
Citations
21

Abstract

In this paper, we address sensor fusion for the attitude estimation of Micromechanical Aerial Vehicles (MAVs), in particular a biologically inspired robotic housefly. First, a dynamic observer is proposed which estimates attitude based on kinematic data available from different and redundant bio-inspired sensors such as halteres, ocelli, gravitometers, magnetic compass and light polarization compass. In particular, following a geometric approach, the tradi-tional structure of complementary filters, suitable for multiple sensors fusion, is specialized to the Lie group of rigid body rotations SO(3) and almost-global asymptotic stability is proved. Then, the filter performance is experimentally tested via a 3 degrees-of-freedom robotic flapper and a custom-made set of inertial/magnetic sensors. Experimental results show good agreement, upon proper tuning of the filter, between the actual kinematics of the robotic flapper and the kinematics reconstructed from the inertial/magnetic sensors via the proposed filter.

Keywords

KinematicsSensor fusionComputer visionGyroscopeInertial frame of referenceArtificial intelligenceComputer scienceRobotFilter (signal processing)Control theory (sociology)

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