Jigsaw: indoor floor plan reconstruction via mobile crowdsensing

Ruipeng Gao, Mingmin Zhao, Tao Ye, Fan Ye, Yizhou Wang, Kaigui Bian, Tao Wang, Xiaoming Li
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引用次数: 249

Abstract

The lack of floor plans is a critical reason behind the current sporadic availability of indoor localization service. Service providers have to go through effort-intensive and time-consuming business negotiations with building operators, or hire dedicated personnel to gather such data. In this paper, we propose Jigsaw, a floor plan reconstruction system that leverages crowdsensed data from mobile users. It extracts the position, size and orientation information of individual landmark objects from images taken by users. It also obtains the spatial relation between adjacent landmark objects from inertial sensor data, then computes the coordinates and orientations of these objects on an initial floor plan. By combining user mobility traces and locations where images are taken, it produces complete floor plans with hallway connectivity, room sizes and shapes. Our experiments on 3 stories of 2 large shopping malls show that the 90-percentile errors of positions and orientations of landmark objects are about 1~2m and 5~9°, while the hallway connectivity is 100% correct.
拼图:通过移动众测重建室内平面图
缺乏平面图是目前室内定位服务零星可用的一个关键原因。服务提供商必须与建筑运营商进行费时费力的商业谈判,或者雇佣专门的人员来收集这些数据。在本文中,我们提出了Jigsaw,一个利用移动用户众感数据的平面图重建系统。它从用户拍摄的图像中提取单个地标物体的位置、大小和方向信息。它还从惯性传感器数据中获得相邻地标物体之间的空间关系,然后计算这些物体在初始平面图上的坐标和方向。通过结合用户移动轨迹和拍摄图像的位置,它可以生成完整的平面图,包括走廊连接、房间大小和形状。我们在2个大型商场的3层进行的实验表明,地标物体的位置和方向的90百分位误差约为1~2m和5~9°,而走廊的连通性是100%正确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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