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A Hybrid Wi-Fi Fingerprint-Based Localization Scheme Achieved by Combining Fisher Score and Stacked Sparse Autoencoder Algorithms

机译:基于混合Wi-Fi指纹的定位方案,通过组合Fisher得分和堆叠稀疏的自动沉积算法实现

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Along with the advancement of wireless technology, indoor localization technology based on Wi-Fi has received considerable attention from academia and industry. The fingerprint-based method is the mainstream approach for Wi-Fi indoor localization and can be easily implemented without additional hardware. However, signal fluctuations constitute a critical issue pertaining to the extraction of robust features to achieve the required localization performance. This study presents a fingerprint feature extraction method commonly referred to as the Fisher score–stacked sparse autoencoder (Fisher–SSAE) method. Some features with low Fisher scores were eliminated, and the representative features were then extracted by the SSAE. Furthermore, this study establishes a hybrid localization model constructed with the use of the global model and the submodel to avoid significant coordinate localization errors attributed to subregional localization errors. Combined with three accessible fingerprint-based positioning methods, namely, the support vector regression, random forest regression, and the multiplayer perceptron classification, the experimental results demonstrate that the proposed methods improve the localization accuracy and response time compared to other feature extraction methods and the single localization model. Compared with some state-of-the-art methods, the proposed methods have better localization performances when large number of features are used.
机译:随着无线技术的进步,基于Wi-Fi的室内定位技术得到了学术界和工业的大量关注。基于指纹的方法是Wi-Fi室内定位的主流方法,可以在没有额外的硬件的情况下轻松实现。然而,信号波动构成了与稳健功能提取有关,以实现所需的本地化性能的关键问题。本研究提出了一种指纹特征提取方法,通常称为Fisher分数堆叠稀疏自动滤器(Fisher-SSAE)方法。消除了一些具有低渔民分数的特征,然后由SSAE提取代表特征。此外,本研究建立了使用全局模型和子模型构造的混合定位模型,以避免归因于次区域定位错误的重要坐标定位误差。结合三个可访问的指纹定位方法,即支持向量回归,随机森林回归和多人回归和多人射击分类,实验结果表明,与其他特征提取方法相比,所提出的方法提高了本地化精度和响应时间单一定位模型。与某些最先进的方法相比,当使用大量特征时,所提出的方法具有更好的定位性能。

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