Reliable communication in Micro Air Vehicle (MAV) swarms is challenging in environments, where conventional radio-based methods suffer from spectrum congestion, jamming, and high power consumption. Inspired by the waggle dance of honeybees, which efficiently communicate the location of food sources without sound or contact, we propose a novel visual communication framework for MAV swarms using motion-based signaling. In this framework, MAVs convey information, such as heading and distance, through deliberate flight patterns, which are passively captured by event cameras and interpreted using a predefined visual codebook of four motion primitives: vertical (up/down), horizontal (left/right), left-to-up-to-right, and left-to-down-to-right, representing control symbols (``start'', ``end'', ``1'', ``0''). To decode these signals, we design an event frame-based segmentation model and a lightweight Spiking Neural Network (SNN) for action recognition. An integrated decoding algorithm then combines segmentation and classification to robustly interpret MAV motion sequences. Experimental results validate the framework's effectiveness, which demonstrates accurate decoding and low power consumption, and highlights its potential as an energy-efficient alternative for MAV communication in constrained environments.
翻译:在传统无线电通信方法面临频谱拥塞、干扰和高功耗挑战的环境中,微型飞行器(MAV)集群的可靠通信实现困难。受蜜蜂通过摇摆舞高效传递食物源位置(无需声音或接触)的启发,我们提出一种基于运动信号的新型MAV集群视觉通信框架。在该框架中,MAV通过预设飞行模式传递航向与距离等信息,这些信息由事件相机被动捕获,并通过包含四种运动基元(垂直向上/向下、水平向左/向右、左-上-右、左-下-右)的预定义视觉码本进行解析,分别对应控制符号(“起始”“终止”“1”“0”)。为解码这些信号,我们设计了基于事件帧的分割模型和用于动作识别的轻量级脉冲神经网络(SNN),并通过集成解码算法结合分割与分类结果,实现对MAV运动序列的鲁棒解析。实验结果验证了该框架的有效性,其具备精确解码能力和低功耗特性,展现了在受限环境中作为MAV通信节能替代方案的潜力。