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Multi-sensory Anti-collision Design for Autonomous Nano-swarm Exploration

Authors :
Pourjabar, Mahyar
Rusci, Manuele
Bompani, Luca
Lamberti, Lorenzo
Niculescu, Vlad
Palossi, Daniele
Benini, Luca
Publication Year :
2023

Abstract

This work presents a multi-sensory anti-collision system design to achieve robust autonomous exploration capabilities for a swarm of 10 cm-side nano-drones operating on object detection missions. We combine lightweight single-beam laser ranging to avoid proximity collisions with a long-range vision-based obstacle avoidance deep learning model (i.e., PULP-Dronet) and an ultra-wide-band (UWB) based ranging module to prevent intra-swarm collisions. An in-field study shows that our multisensory approach can prevent collisions with static obstacles, improving the mission success rate from 20% to 80% in cluttered environments w.r.t. a State-of-the-Art (SoA) baseline. At the same time, the UWB-based sub-system shows a 92.8% success rate in preventing collisions between drones of a four-agent fleet within a safety distance of 65 cm. On a SoA robotic platform extended by a GAP8 multi-core processor, the PULP-Dronet runs interleaved with an objected detection task, which constraints its execution at 1.6 frame/s. This throughput is sufficient for avoiding obstacles with a probability of about 40% but shows a need for more capable processors for the next-generation nano-drone swarms.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.13086
Document Type :
Working Paper