School of Informatics, University of Edinburgh, EH8 9AB Edinburgh, UK.
Sheffield Robotics, Department of Computer Science, University of Sheffield, S1 4DP Sheffield, UK.
Sci Robot. 2023 Sep 13;8(82):eadg3679. doi: 10.1126/scirobotics.adg3679. Epub 2023 Sep 27.
For many robotics applications, it is desirable to have relatively low-power and efficient onboard solutions. We took inspiration from insects, such as ants, that are capable of learning and following routes in complex natural environments using relatively constrained sensory and neural systems. Such capabilities are particularly relevant to applications such as agricultural robotics, where visual navigation through dense vegetation remains a challenging task. In this scenario, a route is likely to have high self-similarity and be subject to changing lighting conditions and motion over uneven terrain, and the effects of wind on leaves increase the variability of the input. We used a bioinspired event camera on a terrestrial robot to collect visual sequences along routes in natural outdoor environments and applied a neural algorithm for spatiotemporal memory that is closely based on a known neural circuit in the insect brain. We show that this method is plausible to support route recognition for visual navigation and more robust than SeqSLAM when evaluated on repeated runs on the same route or routes with small lateral offsets. By encoding memory in a spiking neural network running on a neuromorphic computer, our model can evaluate visual familiarity in real time from event camera footage.
对于许多机器人应用来说,拥有相对低功耗和高效的板载解决方案是很理想的。我们从昆虫(如蚂蚁)身上获得灵感,它们能够利用相对受限的感觉和神经系统在复杂的自然环境中学习和遵循路线。这些能力在农业机器人等应用中特别相关,在这些应用中,通过密集的植被进行视觉导航仍然是一项具有挑战性的任务。在这种情况下,路线很可能具有高度的自相似性,并受到不断变化的光照条件和不平坦地形上的运动的影响,而风对树叶的影响增加了输入的可变性。我们在一个地面机器人上使用了一种仿生事件摄像机,在自然户外环境中沿着路线采集视觉序列,并应用了一种基于昆虫大脑中已知神经回路的时空记忆神经算法。我们表明,这种方法支持用于视觉导航的路线识别,并且在对同一路线或具有小横向偏移的路线进行重复运行的评估中比 SeqSLAM 更稳健。通过在神经形态计算机上运行的尖峰神经网络对记忆进行编码,我们的模型可以实时从事件摄像机的镜头中评估视觉熟悉度。