论文标题

部分可观测时空混沌系统的无模型预测

In the realm of hybrid Brain: Human Brain and AI

论文作者

Fares, Hoda, Ronchini, Margherita, Zamani, Milad, Farkhani, Hooman, Moradi, Farshad

论文摘要

随着神经科学和工程的最新发展,现在可以记录大脑信号并解码它们。同样,越来越多的刺激方法已出现以调节和影响大脑活动。当前的脑部计算机界面(BCI)技术主要是在治疗结果上,它已经证明了其对严重运动障碍患者的辅助和康复技术的效率。最近,人工智能(AI)和机器学习(ML)技术已用于解码大脑信号。除了这一进展之外,以可植入的神经技术的形式将AI与晚期BCI相结合,还为神经和精神疾病的诊断,预测和治疗提供了新的可能性。在这种情况下,我们设想开发闭环,智能,低功耗和微型神经接口,这些神经接口将使用带有神经形态硬件的大脑灵感的AI技术来处理大脑的数据。这将被称为脑启发的大脑计算机界面(BI-BCIS)。这种神经界面将为大脑区域提供更深层次的机会,并更好地了解大脑功能和工作机制,从而提高了BCIS手术稳定性和系统的效率。一方面,以尖峰神经网络(SNN)为代表的大脑启发的AI算法将用于解释BCI系统中的多模式神经信号。另一方面,由于SNN能够捕获生物神经元的丰富动态并表示和整合不同信息维度(例如时间,频率和相位),因此它将用于建模和编码大脑中的复杂信息处理并向用户提供反馈。本文概述了与大脑接口的不同方法,介绍了未来的应用,并讨论了AI和BCIS的合并。

With the recent developments in neuroscience and engineering, it is now possible to record brain signals and decode them. Also, a growing number of stimulation methods have emerged to modulate and influence brain activity. Current brain-computer interface (BCI) technology is mainly on therapeutic outcomes, it already demonstrated its efficiency as assistive and rehabilitative technology for patients with severe motor impairments. Recently, artificial intelligence (AI) and machine learning (ML) technologies have been used to decode brain signals. Beyond this progress, combining AI with advanced BCIs in the form of implantable neurotechnologies grants new possibilities for the diagnosis, prediction, and treatment of neurological and psychiatric disorders. In this context, we envision the development of closed loop, intelligent, low-power, and miniaturized neural interfaces that will use brain inspired AI techniques with neuromorphic hardware to process the data from the brain. This will be referred to as Brain Inspired Brain Computer Interfaces (BI-BCIs). Such neural interfaces would offer access to deeper brain regions and better understanding for brain's functions and working mechanism, which improves BCIs operative stability and system's efficiency. On one hand, brain inspired AI algorithms represented by spiking neural networks (SNNs) would be used to interpret the multimodal neural signals in the BCI system. On the other hand, due to the ability of SNNs to capture rich dynamics of biological neurons and to represent and integrate different information dimensions such as time, frequency, and phase, it would be used to model and encode complex information processing in the brain and to provide feedback to the users. This paper provides an overview of the different methods to interface with the brain, presents future applications and discusses the merger of AI and BCIs.

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