PhysioVR:一个用于生理计算的新型移动虚拟现实框架

John Edison Muñoz Cardona, T. Paulino, H. Vasanth, Karolina Baras
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引用次数: 33

摘要

虚拟现实(VR)正在成为一种无处不在的技术,利用智能手机和无屏幕外壳,以低价格提供高度身临其境的体验。这种模式转变的结果现在被称为移动VR (mVR)。尽管与传统的沉浸式VR方法相比,mVR提供了许多优势,但最大的限制之一是与mVR体验可用的交互途径有关。利用生理计算原理,我们创建了PhysioVR框架,这是一个开源软件工具,旨在促进通过mVR应用中可穿戴设备测量的生理信号的集成。PhysioVR包括来自Android可穿戴设备的心率(HR)信号、来自低成本脑机接口的脑电图(EEG)信号和来自无线臂带的肌电图(EMG)信号。生理传感器通过蓝牙与智能手机连接,PhysioVR使用UDP通信协议促进数据流,从而允许第三方应用程序(如Unity3D游戏引擎)进行多播传输。此外,该框架提供了与VR内容的双向通信,允许使用实时控制和数据记录选项触发外部事件。我们开发了一款名为《EmoCat Rescue》的演示游戏项目,鼓励玩家调整人力资源等级以成功完成游戏内任务。EmoCat Rescue包含在PhysioVR项目中,可以免费下载。该框架简化了来自可穿戴消费设备的多种生理信号和参数的采集、流式传输和记录,提供了一个单一而高效的接口,以创建新颖的生理响应mVR应用。
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PhysioVR: A novel mobile virtual reality framework for physiological computing
Virtual Reality (VR) is morphing into a ubiquitous technology by leveraging of smartphones and screenless cases in order to provide highly immersive experiences at a low price point. The result of this shift in paradigm is now known as mobile VR (mVR). Although mVR offers numerous advantages over conventional immersive VR methods, one of the biggest limitations is related with the interaction pathways available for the mVR experiences. Using physiological computing principles, we created the PhysioVR framework, an Open-Source software tool developed to facilitate the integration of physiological signals measured through wearable devices in mVR applications. PhysioVR includes heart rate (HR) signals from Android wearables, electroencephalography (EEG) signals from a low-cost brain computer interface and electromyography (EMG) signals from a wireless armband. The physiological sensors are connected with a smartphone via Bluetooth and the PhysioVR facilitates the streaming of the data using UDP communication protocol, thus allowing a multicast transmission for a third party application such as the Unity3D game engine. Furthermore, the framework provides a bidirectional communication with the VR content allowing an external event triggering using a real-time control as well as data recording options. We developed a demo game project called EmoCat Rescue which encourage players to modulate HR levels in order to successfully complete the in-game mission. EmoCat Rescue is included in the PhysioVR project which can be freely downloaded. This framework simplifies the acquisition, streaming and recording of multiple physiological signals and parameters from wearable consumer devices providing a single and efficient interface to create novel physiologically-responsive mVR applications.
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