Automatic recognition of excavator working cycles using supervised learning and motion data obtained from inertial measurement units (IMUs)
Amirmasoud Molaei,
Antti Kolu,
Kalle Lahtinen
et al.
Abstract:This paper proposes an automatic method for excavator working cycle recognition using supervised classification methods and motion information obtained from four inertial measurement units (IMUs) attached to moving parts of an excavator. Monitoring and analyzing tasks that have been performed by heavy-duty mobile machines (HDMMs) are significantly required to assist management teams in productivity and progress monitoring, efficient resource allocation, and scheduling. Nevertheless, traditional methods depend … Show more
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