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基于聚类的深度学习分类器数据预处理去噪方案在指纹室内定位系统中的应用。

Clustering-Based Noise Elimination Scheme for Data Pre-Processing for Deep Learning Classifier in Fingerprint Indoor Positioning System.

机构信息

Division of Electronics and Electrical Engineering, Dongguk University-Seoul, Seoul 04620, Korea.

出版信息

Sensors (Basel). 2021 Jun 25;21(13):4349. doi: 10.3390/s21134349.

Abstract

Wi-Fi-based indoor positioning systems have a simple layout and a low cost, and they have gradually become popular in both academia and industry. However, due to the poor stability of Wi-Fi signals, it is difficult to accurately decide the position based on a received signal strength indicator (RSSI) by using a traditional dataset and a deep learning classifier. To overcome this difficulty, we present a clustering-based noise elimination scheme (CNES) for RSSI-based datasets. The scheme facilitates the region-based clustering of RSSIs through density-based spatial clustering of applications with noise. In this scheme, the RSSI-based dataset is preprocessed and noise samples are removed by CNES. This experiment was carried out in a dynamic environment, and we evaluated the lab simulation results of CNES using deep learning classifiers. The results showed that applying CNES to the test database to eliminate noise will increase the success probability of fingerprint location. The lab simulation results show that after using CNES, the average positioning accuracy of margin-zero (zero-meter error), margin-one (two-meter error), and margin-two (four-meter error) in the database increased by 17.78%, 7.24%, and 4.75%, respectively. We evaluated the simulation results with a real time testing experiment, where the result showed that CNES improved the average positioning accuracy to 22.43%, 9.15%, and 5.21% for margin-zero, margin-one, and margin-two error, respectively.

摘要

基于 Wi-Fi 的室内定位系统具有结构简单、成本低廉的优点,在学术界和工业界逐渐流行起来。然而,由于 Wi-Fi 信号稳定性差,传统的数据集和深度学习分类器很难根据接收信号强度指示 (RSSI) 准确地确定位置。为了克服这一困难,我们提出了一种基于聚类的 RSSI 数据集噪声消除方案 (CNES)。该方案通过基于密度的空间聚类应用噪声实现了 RSSI 的区域聚类。在该方案中,通过 CNES 对基于 RSSI 的数据集进行预处理和噪声样本去除。本实验在动态环境中进行,我们使用深度学习分类器对 CNES 的实验室模拟结果进行了评估。结果表明,将 CNES 应用于测试数据库以消除噪声将提高指纹定位的成功概率。实验室模拟结果表明,在使用 CNES 后,数据库中零米误差、两米误差和四米误差的平均定位精度分别提高了 17.78%、7.24%和 4.75%。我们通过实时测试实验评估了仿真结果,结果表明,CNES 分别将零米误差、一米误差和两米误差的平均定位精度提高到 22.43%、9.15%和 5.21%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5aae/8272122/c4c2379327d8/sensors-21-04349-g001.jpg

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