基于走廊的自动室内平面图施工,使用房间指纹

Yifei Jiang, Xiang Yun, Xin Pan, Kun Li, Q. Lv, R. Dick, L. Shang, M. Hannigan
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引用次数: 121

摘要

人们大约有70%的时间在室内度过。因此,了解室内环境对于广泛的新兴移动个人和社交应用非常重要。这些应用通常需要室内平面图的知识。然而,室内平面图要么是不可用的,要么需要缓慢、繁琐、容易出错的手工劳动。本文介绍了一种室内自动布置图施工系统。该系统利用Wi-Fi指纹和用户运动信息,通过三个关键步骤自动构建平面图:(1)构建房间邻接图,确定哪些房间相邻;(2)走廊布局学习,估算房间大小,并沿每个走廊排序房间;(3)强制定向扩张,调整房间大小,优化整体平面布局精度。对三座拥有189间客房的建筑物进行的布局研究表明,平面图的准确性很高。该系统被实现为移动中间件,它允许新兴的移动应用程序生成、利用和共享室内平面图。
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Hallway based automatic indoor floorplan construction using room fingerprints
People spend approximately 70% of their time indoors. Understanding the indoor environments is therefore important for a wide range of emerging mobile personal and social applications. Knowledge of indoor floorplans is often required by these applications. However, indoor floorplans are either unavailable or obtaining them requires slow, tedious, and error-prone manual labor. This paper describes an automatic indoor floorplan construction system. Leveraging Wi-Fi fingerprints and user motion information, this system automatically constructs floorplan via three key steps: (1) room adjacency graph construction to determine which rooms are adjacent; (2) hallway layout learning to estimate room sizes and order rooms along each hallway, and (3) force directed dilation to adjust room sizes and optimize the overall floorplan accuracy. Deployment study in three buildings with 189 rooms demonstrates high floorplan accuracy. The system has been implemented as a mobile middleware, which allows emerging mobile applications to generate, leverage, and share indoor floorplans.
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