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Brain-machine interfaces for assistive smart homes: A feasibility study with wearable near-infrared spectroscopy

机译:辅助智能家居的脑机接口:可穿戴式近红外光谱的可行性研究

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Smart houses for elderly or physically challenged people need a method to understand residents' intentions during their daily-living behaviors. To explore a new possibility, we here developed a novel brain-machine interface (BMI) system integrated with an experimental smart house, based on a prototype of a wearable near-infrared spectroscopy (NIRS) device, and verified the system in a specific task of controlling of the house's equipments with BMI. We recorded NIRS signals of three participants during typical daily-living actions (DLAs), and classified them by linear support vector machine. In our off-line analysis, four DLAs were classified at about 70% mean accuracy, significantly above the chance level of 25%, in every participant. In an online demonstration in the real smart house, one participant successfully controlled three target appliances by BMI at 81.3% accuracy. Thus we successfully demonstrated the feasibility of using NIRS-BMI in real smart houses, which will possibly enhance new assistive smart-home technologies.
机译:面向老年人或肢体残障人士的智能房屋需要一种方法来了解居民在日常生活中的意图。为了探索新的可能性,我们在此基于可穿戴的近红外光谱(NIRS)设备的原型,开发了与实验性智能房屋集成的新型脑机接口(BMI)系统,并在特定任务中验证了该系统用BMI控制房屋的设备。我们在典型的日常生活活动(DLA)中记录了三个参与者的NIRS信号,并通过线性支持向量机对其进行了分类。在我们的离线分析中,在每位参与者中,四个DLA的平均准确率约为70%,大大高于25%的机会水平。在真实智能住宅中的在线演示中,一位参与者通过BMI成功地以81.3%的精度控制了三个目标设备。因此,我们成功地证明了在真实的智能房屋中使用NIRS-BMI的可行性,这可能会增强新的辅助智能家居技术。

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