Excite-O-Meter:在虚拟现实中集成心脏活动的软件框架

Luis Quintero, J. Muñoz, Jeroen De Mooij, Michael Gaebler
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引用次数: 9

摘要

当与虚拟现实(VR)环境交互时,身体信号可以补充主观和行为措施,以分析人为因素,例如用户参与度或压力。在VR应用中广泛使用(以及实时分析)身体信号可能是设计更多以用户为中心的个性化VR体验的有力方法。然而,技术和科学挑战(例如,研究级传感设备的成本、所需的编码技能、解释数据所需的专业知识)使物理数据在现有交互式应用程序中的集成复杂化。本文介绍了一个名为Excite-O-Meter的开源软件框架的设计、开发和评估。它允许现有的VR应用程序集成、记录、分析和可视化来自可穿戴传感器的身体信号,例如来自Polar H10胸带的心脏活动(心率及其变异性)。来自58个潜在用户的调查反馈决定了框架的设计要求。两个测试评估了数据获取/分析和数据质量方面的框架和设置。最后,我们提供了一个示例实验,展示了我们的工具如何成为研究人员,爱好者或游戏设计师在VR应用程序中集成身体信号的易于使用和科学验证的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Excite-O-Meter: Software Framework to Integrate Heart Activity in Virtual Reality
Bodily signals can complement subjective and behavioral measures to analyze human factors, such as user engagement or stress, when interacting with virtual reality (VR) environments. Enabling widespread use of (also the real-time analysis) of bodily signals in VR applications could be a powerful method to design more user-centric, personalized VR experiences. However, technical and scientific challenges (e.g., cost of research-grade sensing devices, required coding skills, expert knowledge needed to interpret the data) complicate the integration of bodily data in existing interactive applications. This paper presents the design, development, and evaluation of an open-source software framework named Excite-O-Meter. It allows existing VR applications to integrate, record, analyze, and visualize bodily signals from wearable sensors, with the example of cardiac activity (heart rate and its variability) from the chest strap Polar H10. Survey responses from 58 potential users determined the design requirements for the framework. Two tests evaluated the framework and setup in terms of data acquisition/analysis and data quality. Finally, we present an example experiment that shows how our tool can be an easy-to-use and scientifically validated tool for researchers, hobbyists, or game designers to integrate bodily signals in VR applications.
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