EmBARDiment:用于提高 XR 生产率的嵌入式人工智能代理

Riccardo Bovo, Steven Abreu, Karan Ahuja, Eric J Gonzalez, Li-Te Cheng, Mar Gonzalez-Franco
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引用次数: 0

摘要

运行由大型语言模型(LLM)驱动的聊天机器人的 XR 设备作为始终在线的代理具有巨大的潜力,可以大大提高工作效率。然而,基于屏幕的聊天机器人并没有利用 XR 中可用的全套自然输入,包括面向内部的传感器数据,而是过度依赖明确的语音或文本提示,有时还搭配作为查询一部分的多模态数据。我们提出的解决方案利用了一种注意力框架,该框架可以从 XR 环境中的用户行为、眼球注视和上下文记忆中获取上下文。我们的用户研究证明了我们的方法在 XR 中简化用户与聊天机器人交互的迫切可行性和变革潜力,同时也为未来 XR 嵌入式 LLM 代理的设计提供了启示。
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EmBARDiment: an Embodied AI Agent for Productivity in XR
XR devices running chat-bots powered by Large Language Models (LLMs) have tremendous potential as always-on agents that can enable much better productivity scenarios. However, screen based chat-bots do not take advantage of the the full-suite of natural inputs available in XR, including inward facing sensor data, instead they over-rely on explicit voice or text prompts, sometimes paired with multi-modal data dropped as part of the query. We propose a solution that leverages an attention framework that derives context implicitly from user actions, eye-gaze, and contextual memory within the XR environment. This minimizes the need for engineered explicit prompts, fostering grounded and intuitive interactions that glean user insights for the chat-bot. Our user studies demonstrate the imminent feasibility and transformative potential of our approach to streamline user interaction in XR with chat-bots, while offering insights for the design of future XR-embodied LLM agents.
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