Al-Hudhud Ghada, Alqahtani Layla, Albaity Heyam, Alsaeed Duaa, Al-Turaiki Isra
Information Technology Department, College of Computer and Information Sciences, King Saud University, Riyadh 12371, Saudi Arabia.
King Abdulaziz City for Science and Technology, National Satellite Technology Center, Riyadh 12354, Saudi Arabia.
Sensors (Basel). 2019 Jul 10;19(14):3042. doi: 10.3390/s19143042.
Brain computer interfaces are currently considered to greatly enhance assistive technologies and improve the experiences of people with special needs in the workplace. The proposed adaptive control model for smart offices provides a complete prototype that senses an environment's temperature and lighting and responds to users' feelings in terms of their comfort and engagement levels. The model comprises the following components: (a) sensors to sense the environment, including temperature and brightness sensors, and a headset that collects (EEG) signals, which represent workers' comfort levels; (b) an application that analyzes workers' feelings regarding their willingness to adjust to a space based on an analysis of collected data and that determines workers' attention levels and, thus, engagement; and (c) actuators to adjust the temperature and/or lighting. This research implemented independent component analysis to remove eye movement artifacts from the EEG signals and used an engagement index to calculate engagement levels. This research is expected to add value to research on smart city infrastructures and on assistive technologies to increase productivity in smart offices.
脑机接口目前被认为能极大地增强辅助技术,并改善有特殊需求的人在工作场所的体验。所提出的智能办公室自适应控制模型提供了一个完整的原型,该原型能够感知环境的温度和光照,并根据用户的舒适度和参与度来回应他们的感受。该模型包括以下组件:(a) 用于感知环境的传感器,包括温度和亮度传感器,以及一个收集脑电图 (EEG) 信号的头戴设备,这些信号代表了员工的舒适度;(b) 一个应用程序,该程序基于对收集到的数据的分析来分析员工对于适应空间的意愿的感受,并确定员工的注意力水平,进而确定其参与度;以及 (c) 用于调节温度和/或光照的执行器。本研究采用独立成分分析从脑电图信号中去除眼动伪迹,并使用参与指数来计算参与度水平。预计本研究将为智慧城市基础设施和辅助技术的研究增添价值,以提高智能办公室的生产力。