On the role of generative artificial intelligence in the development of brain-computer interfaces

Seif Eldawlatly
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Abstract

Since their inception more than 50 years ago, Brain-Computer Interfaces (BCIs) have held promise to compensate for functions lost by people with disabilities through allowing direct communication between the brain and external devices. While research throughout the past decades has demonstrated the feasibility of BCI to act as a successful assistive technology, the widespread use of BCI outside the lab is still beyond reach. This can be attributed to a number of challenges that need to be addressed for BCI to be of practical use including limited data availability, limited temporal and spatial resolutions of brain signals recorded non-invasively and inter-subject variability. In addition, for a very long time, BCI development has been mainly confined to specific simple brain patterns, while developing other BCI applications relying on complex brain patterns has been proven infeasible. Generative Artificial Intelligence (GAI) has recently emerged as an artificial intelligence domain in which trained models can be used to generate new data with properties resembling that of available data. Given the enhancements observed in other domains that possess similar challenges to BCI development, GAI has been recently employed in a multitude of BCI development applications to generate synthetic brain activity; thereby, augmenting the recorded brain activity. Here, a brief review of the recent adoption of GAI techniques to overcome the aforementioned BCI challenges is provided demonstrating the enhancements achieved using GAI techniques in augmenting limited EEG data, enhancing the spatiotemporal resolution of recorded EEG data, enhancing cross-subject performance of BCI systems and implementing end-to-end BCI applications. GAI could represent the means by which BCI would be transformed into a prevalent assistive technology, thereby improving the quality of life of people with disabilities, and helping in adopting BCI as an emerging human-computer interaction technology for general use.
论生成式人工智能在开发脑机接口中的作用
脑机接口(BCI)自 50 多年前问世以来,一直有望通过实现大脑与外部设备之间的直接通信来弥补残疾人丧失的功能。尽管过去几十年的研究已经证明了 BCI 作为一种成功的辅助技术的可行性,但 BCI 在实验室外的广泛应用仍然遥不可及。这可归因于 BCI 实际应用所需的一系列挑战,包括数据可用性有限、非侵入式记录的大脑信号的时间和空间分辨率有限以及受试者之间的可变性。此外,长期以来,BCI 开发主要局限于特定的简单大脑模式,而依赖复杂大脑模式开发其他 BCI 应用已被证明是不可行的。最近,生成式人工智能(GAI)作为一个人工智能领域出现,在该领域中,经过训练的模型可用于生成与现有数据属性相似的新数据。鉴于在与生物识别(BCI)开发面临类似挑战的其他领域中观察到的增强效果,GAI 最近已被用于多种生物识别(BCI)开发应用中,以生成合成大脑活动,从而增强记录的大脑活动。本文简要回顾了最近采用 GAI 技术克服上述 BCI 挑战的情况,展示了在增强有限的脑电图数据、提高记录的脑电图数据的时空分辨率、增强 BCI 系统的跨受试者性能以及实施端到端 BCI 应用程序方面使用 GAI 技术所取得的改进。通过 GAI,BCI 可以转变为一种普遍的辅助技术,从而提高残疾人的生活质量,并有助于将 BCI 作为一种新兴的人机交互技术加以普及。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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