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ZeeFi: Zero-Effort Floor Identification with Deep Learning for Indoor Localization

机译:ZEEFI:零努力楼面识别,深入学习室内定位

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The knowledge of the floor-level location of a user in a multi-storey building is important for many applications, especially for emergency response. Existing floor identification systems suffer from a variety of limitations such as low accuracy, the need for a time-consuming site survey, assumption of user encounters, knowledge of the initial floor, and/or poor applicability. In this paper, we propose a novel, zero-effort, deep learning-based floor identification system, called extit{ZeeFi}. The proposed system uses the widely-available smartphone sensing to identify on which floor a user is located. By recognizing the ground floor automatically, the proposed system does not require site survey, initial floor knowledge, and other assumptions. To achieve accurate floor identification performance, we have developed a deep learning-based method. Experimental results show that the proposed system outperforms the state-of-the-art systems, and is very promising for large-scale deployment.
机译:对多层建筑中用户的楼层位置的知识对于许多应用来说都很重要,特别是对于应急响应。现有地板识别系统遭受各种局限性,例如低精度,需要耗时的现场调查,假设用户遭遇,初始楼层的知识,和/或适用性差。在本文中,我们提出了一种新颖,零努力,基于深度学习的地板识别系统,称为“ZEEFI”{ZEEFI}。所提出的系统使用广泛可用的智能手机感测来识别用户所在的楼层。通过自动识别底层,所提出的系统不需要现场调查,初始地板知识和其他假设。为了实现准确的地板识别性能,我们开发了一种深入的学习方法。实验结果表明,该系统优于最先进的系统,非常有希望大规模部署。

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