Carnegie Mellon University
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Obstacle Detection and Safeguarding for a HIgh-Speed Autonomous Hydraulic Excavator

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posted on 1998-01-01, 00:00 authored by Chris Leger, Patrick Rowe, John Bares, Scott Boehmke, Anthony Stentz
Hydraulic excavators are large, powerful machines which are often operated in high-production settings. Successful automation of excavators for mass excavation tasks require safeguarding algorithms which do not negatively impact productivity. We present a two-level sensor-based safeguarding approach which utilizes obstacle detection to prevent collisions and motion detection to halt operation when unanticipated vehicles or people approach the excavator.

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1998-01-01

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