Indoor location-based services rely on the availability of sufficiently accurate positioning in indoor spaces. A popular approach to positioning relies on so-called radio maps that contain pairs of a vector of Wi-Fi signal strength indicator values (RSSIs), called a fingerprint, and a location label, called a reference point (RP), in which the fingerprint was observed. The positioning accuracy depends on the quality of the radio maps and their fingerprints. Radio maps are often sparse, with many pairs containing vectors missing many RSSIs as well as RPs. Aiming to improve positioning accuracy, we present a complete set of techniques to impute such missing values in radio maps. We differentiate two types of missing RSSIs: missing not at random (MNAR) and missing at random (MAR). Specifically, we design a framework encompassing a missing RSSI differentiator followed by a data imputer for missing values. The differentiator identifies MARs and MNARs via clustering-based fingerprint analysis. Missing RSSIs and RPs are then imputed jointly by means of a novel encoder-decoder architecture that leverages temporal dependencies in data collection as well as correlations among fingerprints and RPs. A time-lag mechanism is used to consider the aging of data, and a sparsity-friendly attention mechanism is used to focus attention score calculation on observed data. Extensive experiments with real data from two buildings show that our proposal outperforms the alternatives with significant advantages in terms of imputation accuracy and indoor positioning accuracy.
翻译:室内定位服务取决于室内空间是否具有足够准确的定位。一种流行的定位方法依赖于所谓的无线电地图,其中含有Wi-Fi信号强度指标值矢量的配对,称为指纹,以及一个位置标签,称为参考点(RP),其中观察到指纹。定位准确性取决于无线电地图及其指纹的质量。无线电地图往往稀少,许多配对含有病媒的配对缺少许多RSSI和RPs。为了提高定位准确性,我们展示了一整套在无线电地图中估算此类缺失值的技术。我们区分了两种缺失的 RSSIs:不是随机丢失的,而是随机丢失的。具体地说,我们设计了一个框架,其中含有缺失的 RSSI 差异器,随后又有一个数据嵌入缺失值的数据。不同者通过基于集群的指纹分析来识别MARs和MARs。然后,通过一个新型的解码器和RPs,通过一种新型的解码结构,利用数据收集中的时间依赖性可靠性来计算这些缺失。在使用的时间定位和分级模型的计算方法中,一个与我们使用的数据序列和分级模型的精度的计算中,一个用来计算方法是用于数据收集和分级结构的焦化结构中的一种明显的重度。</s>