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首页> 外文期刊>Frontiers in Neuroscience >Fuzzy Decision-Making Fuser (FDMF) for Integrating Human-Machine Autonomous (HMA) Systems with Adaptive Evidence Sources
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Fuzzy Decision-Making Fuser (FDMF) for Integrating Human-Machine Autonomous (HMA) Systems with Adaptive Evidence Sources

机译:人机自治(HMA)系统与自适应证据源集成的模糊决策融合器(FDMF)

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A brain-computer interface (BCI) creates a direct communication pathway between the human brain and an external device or system. In contrast to patient-oriented BCIs, which are intended to restore inoperative or malfunctioning aspects of the nervous system, a growing number of BCI studies focus on designing auxiliary systems that are intended for everyday use. The goal of building these BCIs is to provide capabilities that augment existing intact physical and mental capabilities. However, a key challenge to BCI research is human variability; factors such as fatigue, inattention, and stress vary both across different individuals and for the same individual over time. If these issues are addressed, autonomous systems may provide additional benefits that enhance system performance and prevent problems introduced by individual human variability. This study proposes a human-machine autonomous (HMA) system that simultaneously aggregates human and machine knowledge to recognize targets in a rapid serial visual presentation (RSVP) task. The HMA focuses on integrating an RSVP BCI with computer vision techniques in an image-labeling domain. A fuzzy decision-making fuser (FDMF) is then applied in the HMA system to provide a natural adaptive framework for evidence-based inference by incorporating an integrated summary of the available evidence (i.e., human and machine decisions) and associated uncertainty. Consequently, the HMA system dynamically aggregates decisions involving uncertainties from both human and autonomous agents. The collaborative decisions made by an HMA system can achieve and maintain superior performance more efficiently than either the human or autonomous agents can achieve independently. The experimental results shown in this study suggest that the proposed HMA system with the FDMF can effectively fuse decisions from human brain activities and the computer vision techniques to improve overall performance on the RSVP recognition task. This conclusion demonstrates the potential benefits of integrating autonomous systems with BCI systems.
机译:脑机接口(BCI)在人脑与外部设备或系统之间建立了直接的通信路径。与旨在恢复神经系统无法正常工作或功能失常的以患者为中心的BCI相比,越来越多的BCI研究致力于设计用于日常使用的辅助系统。建立这些BCI的目标是提供增强现有完整身心能力的功能。但是,BCI研究的关键挑战是人的可变性。疲劳,注意力不集中和压力等因素在不同个体之间以及同一个体随时间变化。如果解决了这些问题,自治系统可能会提供其他好处,这些好处可以增强系统性能并防止因个人可变性而引起的问题。这项研究提出了一种人机自动(HMA)系统,该系统可以同时汇总人和机器知识,以识别快速串行视觉呈现(RSVP)任务中的目标。 HMA致力于在图像标签领域将RSVP BCI与计算机视觉技术集成在一起。然后将模糊决策融合器(FDMF)应用于HMA系统中,通过合并可用证据(即人为和机器决策)和相关不确定性的综合摘要,为基于证据的推理提供自然的自适应框架。因此,HMA系统动态地汇总了涉及人员和自治代理不确定性的决策。由HMA系统做出的协作决策可以比人工或自治代理独立完成的工作更有效地实现和维持卓越的性能。本研究显示的实验结果表明,所提出的带有FDMF的HMA系统可以有效融合人脑活动和计算机视觉技术的决策,从而改善RSVP识别任务的整体性能。该结论证明了将自治系统与BCI系统集成的潜在好处。

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