ROSep 18, 2018

Fast Autonomous Flight in Warehouses for Inventory Applications

arXiv:1809.06628v194 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of efficient inventory management for logistics providers, but it is incremental as it builds on existing SLAM and sensor technologies.

The authors tackled autonomous drone flight in warehouses for inventory tasks, achieving fully autonomous operation with obstacle avoidance and stock detection using a multimodal sensor setup in a real logistics warehouse.

The past years have shown a remarkable growth in use-cases for micro aerial vehicles (MAVs). Conceivable indoor applications require highly robust environment perception, fast reaction to changing situations, and stable navigation, but reliable sources of absolute positioning like GNSS or compass measurements are unavailable during indoor flights. We present a high-performance autonomous inventory MAV for operation inside warehouses. The MAV navigates along warehouse aisles and detects the placed stock in the shelves alongside its path with a multimodal sensor setup containing an RFID reader and two high-resolution cameras. We describe in detail the SLAM pipeline based on a 3D lidar, the setup for stock recognition, the mission planning and trajectory generation, as well as a low-level routine for avoidance of dynamical or previously unobserved obstacles. Experiments were performed in an operative warehouse of a logistics provider, in which an external warehouse management system provided the MAV with high-level inspection missions that are executed fully autonomously.

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