A Multimodal Perception System for Detection of Human Operators in Robotic Work Cells

2019 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS (SMC)(2019)

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摘要
Workspace monitoring is a critical hw/sw component of modern industrial work cells or in service robotics scenarios, where human operators share their workspace with robots. Reliability of human detection is a major requirement not only for safety purposes but also to avoid unnecessary robot stops or slowdowns in case of false positives. The present paper introduces a novel multimodal perception system for human tracking in shared workspaces based on the fusion of depth and thermal images. A machine learning approach is pursued to achieve reliable detection performance in multi-robot collaborative systems. Robust experimental results are finally demonstrated on a real robotic work cell.
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关键词
shared workspaces,detection performance,robotic work cell,human operators,workspace monitoring,industrial work cells,service robotics scenarios,human detection,human tracking,multi-robot collaborative systems,thermal images,multi-modal perception system,safety purposes,machine learning
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