3.8 Proceedings Paper

Towards a Multi-Pixel Time-of-Flight Indoor Navigation System for Nano-Drone Applications

出版社

IEEE
DOI: 10.1109/I2MTC48687.2022.9806701

关键词

UAV; nano-drone; autonomous navigation; obstacle avoidance; Time of Flight

资金

  1. STMicroelectronics
  2. Politecnico di Torino outgoing mobility program
  3. EDISU international mobility grant

向作者/读者索取更多资源

This paper explores and characterizes a multi-zone Time of Flight (ToF) sensor to enhance autonomous navigation for nano and micro UAVs. The integrated ToF sensor is tested and evaluated in real-world scenarios, showing its capability in obstacle detection and calculating approaching angles.
Unmanned aerial vehicles (UAVs) have recently attracted the industry's attention due to their numerous civilian and potential commercial applications. A promising UAV subclass includes nano and micro UAVs, characterized by centimeter size, few grams of payload and extremely limited on-board computational resources. Those features pose major challenges to enable autonomous navigation or even more basic relevant subtasks, such as reliable obstacle avoidance. This paper explores and characterizes a multi-zone Time of Flight (ToF) sensor to enhance autonomous navigation with a significantly lower computational load than most common visual-based solutions. In particular, the state-of-the-art integrated ToF sensor is characterized for the first time in literature in-field using an ad hoc lightweight PCB and the Crazyflie nano-UAV. The paper focuses, on the 8x8 pixel configuration, to detect obstacles up to 3m with centimeter accuracy and a frame rate up to 15 fps. The paper presents a solution for computing the approaching angle, crucial for many UAV tasks, with a maximum error of +/- 6 degrees. Furthermore, relying on empirical data, the paper proposes a lightweight approach to calculate collision probability from each ToF sensor frame. This work aims to pave the way for future nano-UAV camera-less compact navigation solutions capable of extracting complex environmental features directly on-board.

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