基于Wi-Fi指纹的大面积准确高效室内定位

Moisés Ramires, J. Torres-Sospedra, A. Moreira
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引用次数: 1

摘要

指纹识别的核心是基于射频签名在给定位置随时间的唯一性。在脱机阶段,指纹(来自不同锚点的RSSI值集)在给定位置收集,生成无线电地图。在在线阶段,匹配算法从无线电地图中检索最相似的指纹,并计算每个操作指纹的位置估计。然而,计算与无线电地图中所有样本的相似性可能效率低下,并且在无线电地图很大的情况下无法缩放。以前的尝试是在离线阶段通过智能聚类对无线地图进行分割,在在线阶段通过两步估计过程来减轻计算负荷。然而,大多数应用的聚类模型都是通用的,没有考虑信号的传播,并且经常过滤相关指纹,从而导致较高的定位误差。本文介绍了一种基于rssi的指纹识别聚类模型——最强AP集(SAS)。结果表明,与不聚类的完整模型相比,SAS不仅能够降低计算成本,而且具有更好的准确率。
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Accurate and Efficient Wi-Fi Fingerprinting-Based Indoor Positioning in Large Areas
The core of fingerprinting is based on the uniqueness of the RF signature in a given location over time. In the offline phase, the fingerprints -the set of RSSI values from different anchors-are collected at given locations generating a radio map. In the online phase, a matching algorithm retrieves the most similar fingerprints from the radio map and computes the position estimate for every operational fingerprint. However, computing the similarities to all the samples in the radio map may be inefficient and not scale in those cases where the radio map is large. Previous attempts to alleviate the computational load rely on the segmentation of the radio map through smart clustering in the offline stage, and a two-step estimation process in the online stage. However, most of the clustering models applied are generic without any consideration about signal propagation and relevant fingerprints are often filtered, resulting in a higher positioning error. This paper introduces Strongest AP Set (SAS), a clustering model conceived for RSSI-based fingerprinting. The results show that SAS is not only able to reduce the computational cost, but also to provide better accuracy than the full model without clustering.
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