GRAFICS:使用众包射频信号的基于图形嵌入的地板识别

Weipeng Zhuo, Ziqi Zhao, Ka Ho Chiu, Shiju Li, Sangtae Ha, Chul-Ho Lee, S. G. Gary Chan
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引用次数: 2

摘要

我们研究了以众包方式获得的射频(RF)信号样本的地板识别问题,其中信号样本高度异构,大多数样本缺乏地板标签。我们提出了GRAFICS,一个基于图形嵌入的地板识别系统。GRAFICS首先建立了一个高度通用的二部图模型,其中一边是ap,另一边是信号样本。然后,GRAFICS通过一种名为E-LINE的新颖图嵌入算法来学习信号样本的低维嵌入。最后,GRAFICS通过基于接近度的分层聚类方法将节点嵌入与一些标记样本的嵌入聚类,从而简化了每个新样本的底层识别。我们基于两个大型数据集验证了GRAFICS的有效性,这些数据集包含来自中国杭州204栋建筑和香港5栋建筑的射频信号记录。我们的实验结果表明,GRAFICS仅使用少量标记样本就获得了高度准确的预测性能(微观和宏观f分数均为96%),并且显著优于几种最先进的算法(微观f分数提高约45%,宏观f分数提高53%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GRAFICS: Graph Embedding-based Floor Identification Using Crowdsourced RF Signals
We study the problem of floor identification for radiofrequency (RF) signal samples obtained in a crowdsourced manner, where the signal samples are highly heterogeneous and most samples lack their floor labels. We propose GRAFICS, a graph embedding-based floor identification system. GRAFICS first builds a highly versatile bipartite graph model, having APs on one side and signal samples on the other. GRAFICS then learns the low-dimensional embeddings of signal samples via a novel graph embedding algorithm named E-LINE. GRAFICS finally clusters the node embeddings along with the embeddings of a few labeled samples through a proximity-based hierarchical clustering, which eases the floor identification of every new sample. We validate the effectiveness of GRAFICS based on two large-scale datasets that contain RF signal records from 204 buildings in Hangzhou, China, and five buildings in Hong Kong. Our experiment results show that GRAFICS achieves highly accurate prediction performance with only a few labeled samples (96% in both micro- and macro-F scores) and significantly outperforms several state-of-the-art algorithms (by about 45% improvement in micro-F score and 53% in macro-F score).
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