Neuromorphic Computing Lab, Intel, Munich, Germany.
BMW Group, Department of Research, New Technologies and Innovation, Munich, Germany.
Sci Robot. 2022 Jun 29;7(67):eabl8419. doi: 10.1126/scirobotics.abl8419.
Neuromorphic hardware enables fast and power-efficient neural network-based artificial intelligence that is well suited to solving robotic tasks. Neuromorphic algorithms can be further developed following neural computing principles and neural network architectures inspired by biological neural systems. In this Viewpoint, we provide an overview of recent insights from neuroscience that could enhance signal processing in artificial neural networks on chip and unlock innovative applications in robotics and autonomous intelligent systems. These insights uncover computing principles, primitives, and algorithms on different levels of abstraction and call for more research into the basis of neural computation and neuronally inspired computing hardware.
神经形态硬件能够实现快速且节能的基于神经网络的人工智能,非常适合解决机器人任务。神经形态算法可以根据神经计算原理和受生物神经网络启发的神经网络架构进一步开发。在本观点中,我们提供了神经科学的最新见解概述,这些见解可以增强片上人工神经网络中的信号处理,并为机器人技术和自主智能系统中的创新应用解锁。这些见解揭示了不同抽象层次的计算原理、原语和算法,并呼吁对神经计算和受神经元启发的计算硬件的基础进行更多研究。