...
首页> 外文期刊>Nature Communications >Deep learning enabled smart mats as a scalable floor monitoring system
【24h】

Deep learning enabled smart mats as a scalable floor monitoring system

机译:深度学习使智能垫作为可扩展楼层监控系统

获取原文
           

摘要

Toward smart building and smart home, floor as one of our most frequently interactive interfaces can be implemented with embedded sensors to extract abundant sensory information without the video-taken concerns. Yet the previously developed floor sensors are normally of small scale, high implementation cost, large power consumption, and complicated device configuration. Here we show a smart floor monitoring system through the integration of self-powered triboelectric floor mats and deep learning-based data analytics. The floor mats are fabricated with unique “identity” electrode patterns using a low-cost and highly scalable screen printing technique, enabling a parallel connection to reduce the system complexity and the deep-learning computational cost. The stepping position, activity status, and identity information can be determined according to the instant sensory data analytics. This developed smart floor technology can establish the foundation using floor as the functional interface for diverse applications in smart building/home, e.g., intelligent automation, healthcare, and security. Designing efficient and fast monitoring and response systems for smart building/home applications remains a challenge. Here, the authors propose a smart floor monitoring system developed through the integration of self-powered triboelectric sensing mechanism and deep learning data analytics.
机译:对于智能建筑和智能家庭,楼层作为我们最常见的交互式接口之一,可以用嵌入式传感器实现,以提取丰富的感官信息,而无需视频采取的问题。然而,先前发达的地板传感器通常具有小规模,高实现成本,大功耗和复杂的设备配置。在这里,我们通过集成自动的摩擦地板垫和基于深度学习的数据分析来展示智能地板监控系统。使用低成本和高度可伸缩的丝网印刷技术,采用独特的“身份”电极图案制造地板垫,实现了平行连接以降低系统复杂性和深度学习的计算成本。可以根据即时感知数据分析确定步进位置,活动状态和身份信息。这款开发的智能地板技术可以使用地板建立基础,作为智能建筑/家庭中不同应用的功能界面,例如智能自动化,医疗保健和安全性。为智能建筑/家庭应用设计的高效和快速监控和响应系统仍然是一个挑战。在这里,作者提出了一种通过自动摩擦摩擦传感机制和深度学习数据分析的整合而开发的智能地板监控系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号