Cross-Modal Analysis of Human Detection for Robotics: An Industrial Case Study
Timm Linder, Narunas Vaskevicius, Robert Schirmer, Kai O. Arras

TL;DR
This paper systematically compares various sensor-algorithm combinations for human detection in robotics, highlighting performance differences and addressing data scarcity through transfer learning in an industrial context.
Contribution
It provides a comprehensive cross-modal analysis of sensor and algorithm performance for human detection in robotics, introducing a transfer learning approach for limited data scenarios.
Findings
Significant performance variance among sensor-algorithm combinations
Transfer learning improves lidar detector performance using RGB-D data
Identifies open challenges for robot system design
Abstract
Advances in sensing and learning algorithms have led to increasingly mature solutions for human detection by robots, particularly in selected use-cases such as pedestrian detection for self-driving cars or close-range person detection in consumer settings. Despite this progress, the simple question "which sensor-algorithm combination is best suited for a person detection task at hand?" remains hard to answer. In this paper, we tackle this issue by conducting a systematic cross-modal analysis of sensor-algorithm combinations typically used in robotics. We compare the performance of state-of-the-art person detectors for 2D range data, 3D lidar, and RGB-D data as well as selected combinations thereof in a challenging industrial use-case. We further address the related problems of data scarcity in the industrial target domain, and that recent research on human detection in 3D point clouds…
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Taxonomy
TopicsAdvanced Neural Network Applications · Video Surveillance and Tracking Methods · Autonomous Vehicle Technology and Safety
Methodstravel james
