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A novel indoor localization method using passive phase difference fingerprinting based on channel state information

机译:一种基于信道状态信息的被动相差指纹室内定位新方法

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The device-free channel state information indoor fingerprint localization method may lead to phase offset errors, strong fingerprint noise and low sampling classification accuracy. In light of these characteristics, this article presents an indoor localization algorithm that is based on phase difference processing and principal component analysis. First, during the offline phase, this algorithm calculates phase differences to correct for random phase shifts and random time shifts in communication links. Second, the principal component analysis method is used to reduce the dimensionality of the denoised data and establish a robust fingerprint database. During the online phase, the algorithm trains a back-propagation neural network using the fingerprint data and determines the modelled mapping relationship between the fingerprint data and the physical localization after carrying out the phase difference correction and the principal component analysis–based dimensionality reduction. The experiments show that compared with existing fingerprint location methods, this algorithm has the advantages of significant denoising effectiveness and high localization accuracy.
机译:无需设备的通道状态信息室内指纹定位方法可能会导致相位偏移误差,较大的指纹噪声和较低的采样分类精度。鉴于这些特性,本文提出了一种基于相位差处理和主成分分析的室内定位算法。首先,在离线阶段,此算法计算相位差以校正通信链路中的随机相移和随机时移。其次,使用主成分分析方法来降低去噪数据的维数,并建立一个健壮的指纹数据库。在在线阶段,该算法使用指纹数据训练反向传播神经网络,并在执行相差校正和基于主成分分析的降维后确定指纹数据与物理位置之间的建模映射关系。实验表明,与现有的指纹定位方法相比,该算法具有显着的去噪效果和较高的定位精度。

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