Indoor Height Recovery by Cellular Signal Data: Poster Abstract

Jinhua Lv, Yige Zhang, Weixiong Rao, Erwu Liu, Rui Wang, Zhaoyang Dong, Zhiren Fu, Yanfen Chen
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Abstract

Understanding fine-grained distribution of telecommunication (Telco) indoor signals within high buildings is important for Telco operators to optimize wireless communication quality. A key task is to tag Telco indoor signals with associated height labels, i.e., the so-called indoor height recovery problem. Unlike existing works requiring sufficient training data within a single building, it is rather hard to generalize the problem across city-scale buildings, especially for those target buildings with scarce training data. To this end, we consider how to perform the height recovery problem for such target buildings with help of source buildings having sufficient labelled Telco signal data. We present a deep neural network (DNN)-based framework which involves three key steps (Telco signal parametrization, spatial image construction and DNN-based height estimation) to fill the gap between the buildings. Our preliminary evaluation demonstrates the potential of our work.
利用蜂窝信号数据恢复室内高度:海报摘要
了解高层建筑内电信(Telco)室内信号的细粒度分布对于电信运营商优化无线通信质量非常重要。一项关键任务是用相关的高度标签标记Telco室内信号,即所谓的室内高度恢复问题。不像现有的工作需要在单个建筑物内获得足够的训练数据,很难将问题推广到整个城市规模的建筑物,特别是对于那些训练数据稀缺的目标建筑物。为此,我们考虑如何在具有足够的标记电信信号数据的源建筑物的帮助下,对这些目标建筑物进行高度恢复问题。提出了一种基于深度神经网络(DNN)的框架,该框架包括三个关键步骤(电信信号参数化、空间图像构建和基于深度神经网络的高度估计)来填补建筑物之间的空白。我们的初步评估显示了我们工作的潜力。
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