可解释的XR:使用llm辅助分析框架理解XR环境的用户行为。

Yoonsang Kim;Zainab Aamir;Mithilesh Singh;Saeed Boorboor;Klaus Mueller;Arie E. Kaufman
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引用次数: 0

摘要

我们提出了Explainable XR,这是一个端到端框架,通过利用大型语言模型(llm)进行数据解释协助,用于分析各种扩展现实(XR)环境中的用户行为。现有的XR用户分析框架在处理跨虚拟(AR、VR、MR)转换、多用户协作应用场景和多模态数据的复杂性方面面临挑战。可解释的XR通过为沉浸式会话的收集、分析和可视化提供与虚拟无关的解决方案来解决这些挑战。我们在我们的框架中提出了三个主要组成部分:(1)一个新的用户数据记录模式,称为用户操作描述符(UAD),它可以捕获用户的多模态操作,以及他们的意图和上下文;(2)一个与平台无关的XR会话记录器;(3)一个可视化分析界面,提供法学硕士辅助的见解,根据分析师的观点量身定制,促进对记录的XR会话数据的探索和分析。我们通过在跨虚拟的个人和协作XR应用程序中演示五个用例场景来演示可解释XR的多功能性。我们的技术评估和用户研究表明,Explainable XR提供了一个高度可用的分析解决方案,用于理解用户行为,并在沉浸式环境中提供对用户行为的多方面、可操作的见解。
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Explainable XR: Understanding User Behaviors of XR Environments Using LLM-Assisted Analytics Framework
We present Explainable XR, an end-to-end framework for analyzing user behavior in diverse eXtended Reality (XR) environments by leveraging Large Language Models (LLMs) for data interpretation assistance. Existing XR user analytics frameworks face challenges in handling cross-virtuality – AR, VR, MR – transitions, multi-user collaborative application scenarios, and the complexity of multimodal data. Explainable XR addresses these challenges by providing a virtuality-agnostic solution for the collection, analysis, and visualization of immersive sessions. We propose three main components in our framework: (1) A novel user data recording schema, called User Action Descriptor (UAD), that can capture the users' multimodal actions, along with their intents and the contexts; (2) a platform-agnostic XR session recorder, and (3) a visual analytics interface that offers LLM-assisted insights tailored to the analysts' perspectives, facilitating the exploration and analysis of the recorded XR session data. We demonstrate the versatility of Explainable XR by demonstrating five use-case scenarios, in both individual and collaborative XR applications across virtualities. Our technical evaluation and user studies show that Explainable XR provides a highly usable analytics solution for understanding user actions and delivering multifaceted, actionable insights into user behaviors in immersive environments.
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