Biosignal-based co-adaptive user-machine interfaces for motor control

IF 4.7 3区 工程技术 Q2 ENGINEERING, BIOMEDICAL
Maneeshika M. Madduri , Samuel A. Burden , Amy L. Orsborn
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引用次数: 1

Abstract

User-machine interfaces map biological signals measured from the user to control commands for external devices. The mapping from biosignals to device inputs is performed by a decoding algorithm. Adaptation of both the user and decoder—co-adaptation—provides opportunities to improve the inclusivity and usability of interfaces for diverse users and applications. User learning leads to robust interface control that can generalize across environments and contexts. Decoder adaptation can personalize interfaces, account for day-to-day signal variability, and improve overall performance. Co-adaptation therefore creates opportunities to shape the user and decoder system to achieve robust and generalizable personalized interfaces. However, co-adaptation creates a two-learner system with dynamic interactions between the user and decoder. Engineering co-adaptive interfaces requires new tools and frameworks to analyze and design user-decoder interactions. In this article, we review adaptive decoding, user learning, and co-adaptation in user-machine interfaces, primarily brain-computer, myoelectric, and kinematic interfaces, for motor control. We then discuss performance criteria for co-adaptive interfaces and propose a game-theoretic approach to designing user-decoder co-adaptation.

基于生物信号的电机控制协同自适应用户-机器界面
用户-机器接口将从用户测量到的生物信号映射到外部设备的控制命令。从生物信号到设备输入的映射由解码算法执行。用户和解码器的适配(共同适配)为改进不同用户和应用程序界面的包容性和可用性提供了机会。用户学习导致健壮的界面控制,可以跨环境和上下文进行推广。解码器自适应可以个性化接口,考虑到日常信号的可变性,并提高整体性能。因此,共同适应创造了塑造用户和解码器系统的机会,以实现健壮和可通用的个性化界面。然而,共同适应创造了一个用户和解码器之间动态交互的双学习者系统。工程共适应接口需要新的工具和框架来分析和设计用户-解码器交互。在本文中,我们回顾了自适应解码,用户学习和共同适应在用户-机器接口,主要是脑-机,肌电和运动学接口,用于运动控制。然后,我们讨论了协同自适应接口的性能标准,并提出了一种设计用户-解码器协同自适应的博弈论方法。
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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来源期刊
Current Opinion in Biomedical Engineering
Current Opinion in Biomedical Engineering Medicine-Medicine (miscellaneous)
CiteScore
8.60
自引率
2.60%
发文量
59
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