首页> 外文会议>International Conference on Internet-of-Things Design and Implementation >IDIoT: Towards Ubiquitous Identification of IoT Devices through Visual and Inertial Orientation Matching During Human Activity
【24h】

IDIoT: Towards Ubiquitous Identification of IoT Devices through Visual and Inertial Orientation Matching During Human Activity

机译:IDIoT:通过人类活动中的视觉和惯性方向匹配实现物联网设备的普遍识别

获取原文

摘要

As Internet-of-Things (IoT) devices become pervasive, opportunities for new, useful services open up. Leveraging existing devices in the environment to enhance the information extracted by personal devices can provide complementary sensing modalities. For instance, an elderly care facility might track progress of their seniors while they exercise by combining basic fitness bracelet data and their motion from vision such as activity/exercise detection. In order for these devices to share and aggregate such information, there needs to be an ID association step, where the devices' physical ID (i.e. the user and location on the body) is matched to their virtual ID (e.g. IP address). Existing approaches to assist this matching process often require intentional interaction, pre-calibration or direct line-of-sight to the device, which become inconvenient as the number of devices increases, or the device is obscured by clothing and body parts. The problem gets worse when devices have multiple users (e.g. family members) or multiple devices are involved simultaneously. We present IDIoT, a calibration-free passive sensing approach that utilizes human-device motion to determine the (user, body location) of each device. IDIoT leverages human pose information of the user, captured by existing 2D cameras (such as on smart TVs), and combines with 3D inertial sensing present on most IoT devices via bone orientation estimation. This way, IDIoT can associate multiple devices even if they are under clothing or in pockets. We extensively characterized IDIoT through real-world experiments and a publicly available dataset with humans wearing 13 on-body devices. Compared to other state-of-the-art baselines, IDIoT achieves up to 2x improvement in device identification, with an average accuracy of up to 92.2%.
机译:随着物联网(IoT)设备的普及,出现了新的有用服务的机会。利用环境中的现有设备来增强个人设备提取的信息可以提供互补的传感方式。例如,老年护理机构可以通过结合基本健身手环数据和他们的视力运动(例如活动/锻炼检测)来跟踪老年人运动时的进度。为了使这些设备共享和聚集这样的信息,需要进行ID关联步骤,其中设备的物理ID(即用户和身体上的位置)与它们的虚拟ID(例如IP地址)匹配。现有的辅助此匹配过程的方法通常需要对设备进行故意的交互,预校准或直接的视线,这随着设备数量的增加或衣服和身体部位被遮盖而变得不便。当设备有多个用户(例如家庭成员)或同时涉及多个设备时,问题变得更加严重。我们提出IDIoT,这是一种无需校准的被动感应方法,该方法利用人类设备的运动来确定每个设备的(用户,身体位置)。 IDIoT利用现有2D摄像机(例如在智能电视上)捕获的用户的人体姿势信息,并通过骨骼方向估计与大多数IoT设备上存在的3D惯性传感相结合。通过这种方式,IDIoT可以关联多个设备,即使它们在衣服或口袋里也是如此。我们通过现实世界的实验和可公开获得的数据集对IDIoT进行了广泛的表征,人类佩戴了13种人体设备。与其他最新基准相比,IDIoT在设备识别方面实现了高达2倍的改进,平均准确度高达92.2%。

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