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SYSTEMS AND METHODS FOR DEEP REINFORCEMENT LEARNING USING A BRAIN-ARTIFICIAL INTELLIGENCE INTERFACE

机译:使用脑-人工智能接口进行深度强化学习的系统和方法

摘要

The present disclosure relates to systems and methods for providing a hybrid brain-computer-interface (hBCI) that can detect an individual's reinforcement signals (e.g., level of interest, arousal, emotional reactivity, cognitive fatigue, cognitive state, or the like) in and/or response to objects, events, and/or actions in an environment by generating reinforcement signals for improving an AI agent controlling the environment, such as an autonomous vehicle. Although the disclosed subject matter is discussed within the context of an autonomous vehicle virtual reality game in the exemplary embodiments of the present disclosure, the disclosed system can be applicable to any other environment in which the human user's sensory input is to be used to influence actions within the environment. Furthermore, the systems and methods disclosed can use neural, physiological, or behavioral signatures to inform deep reinforcement learning based AI systems to enhance user comfort and trust in automation.
机译:本公开涉及用于提供混合脑计算机接口(hBCI)的系统和方法,该混合脑计算机接口可以检测个人的增强信号(例如,兴趣水平,唤醒,情绪反应,认知疲劳,认知状态等)。通过生成用于改善控制环境的AI代理(例如自动驾驶汽车)的增强信号,来对环境中的对象,事件和/或动作做出响应和/或响应。尽管在本公开的示例性实施例中在自动驾驶车辆虚拟现实游戏的上下文中讨论了所公开的主题,但是所公开的系统可以适用于其中人类用户的感官输入将用于影响动作的任何其他环境。在环境中。此外,公开的系统和方法可以使用神经,生理或行为签名来通知基于深度强化学习的AI系统,以增强用户的舒适度和对自动化的信任。

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