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Virtual Neurorobotics (VNR) to Accelerate Development of Plausible Neuromorphic Brain Architectures

机译:虚拟神经机器人(VNR)加速可能的神经形态脑结构的发展

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摘要

Traditional research in artificial intelligence and machine learning has viewed the brain as a specially adapted information-processing system. More recently the field of social robotics has been advanced to capture the important dynamics of human cognition and interaction. An overarching societal goal of this research is to incorporate the resultant knowledge about intelligence into technology for prosthetic, assistive, security, and decision support applications. However, despite many decades of investment in learning and classification systems, this paradigm has yet to yield truly “intelligent” systems. For this reason, many investigators are now attempting to incorporate more realistic neuromorphic properties into machine learning systems, encouraged by over two decades of neuroscience research that has provided parameters that characterize the brain's interdependent genomic, proteomic, metabolomic, anatomic, and electrophysiological networks. Given the complexity of neural systems, developing tenable models to capture the essence of natural intelligence for real-time application requires that we discriminate features underlying information processing and intrinsic motivation from those reflecting biological constraints (such as maintaining structural integrity and transporting metabolic products). We propose herein a conceptual framework and an iterative method of virtual neurorobotics (VNR) intended to rapidly forward-engineer and test progressively more complex putative neuromorphic brain prototypes for their ability to support intrinsically intelligent, intentional interaction with humans. The VNR system is based on the viewpoint that a truly intelligent system must be driven by emotion rather than programmed tasking, incorporating intrinsic motivation and intentionality. We report pilot results of a closed-loop, real-time interactive VNR system with a spiking neural brain, and provide a video demonstration as online supplemental material.
机译:人工智能和机器学习的传统研究已将大脑视为经过特殊改造的信息处理系统。最近,社交机器人技术领域已经发展到可以捕捉人类认知和互动的重要动力。这项研究的总体社会目标是将由此产生的有关智力的知识整合到用于假肢,辅助,安全和决策支持应用程序的技术中。但是,尽管在学习和分类系统上进行了数十年的投资,但这种范例尚未产生真正的“智能”系统。因此,在过去的二十多年的神经科学研究中,许多研究人员正在尝试将更逼真的神经形态特性整合到机器学习系统中,这些研究提供了表征大脑相互依赖的基因组,蛋白质组学,代谢组学,解剖学和电生理学网络的参数。鉴于神经系统的复杂性,开发可捕获的模型以捕获自然智能的本质以进行实时应用要求我们将信息处理和内在动机的潜在特征与反映生物学限制的那些特征(例如保持结构完整性和运输代谢产物)区分开来。我们在此提出虚拟神经机器人(VNR)的概念框架和迭代方法,旨在快速进行正向工程并逐步测试更复杂的推定神经形态大脑原型,以支持它们与人之间的内在智能,故意交互作用。 VNR系统基于这样的观点,即真正的智能系统必须由情感驱动,而不是编程的任务,必须结合内在动机和意图。我们报告了带有尖刺神经脑的闭环实时交互式VNR系统的试验结果,并提供了作为在线补充材料的视频演示。

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