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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Multidimensional Vector Regression for Accurate and Low-Cost Location Estimation in Pervasive Computing
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Multidimensional Vector Regression for Accurate and Low-Cost Location Estimation in Pervasive Computing

机译:普适计算中多维矢量回归的精确而低成本的位置估计

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摘要

In this paper, we present an algorithm for multidimensional vector regression on data that are highly uncertain and nonlinear, and then apply it to the problem of indoor location estimation in a wireless local area network (WLAN). Our aim is to obtain an accurate mapping between the signal space and the physical space without requiring too much human calibration effort. This location estimation problem has traditionally been tackled through probabilistic models trained on manually labeled data, which are expensive to obtain. In contrast, our algorithm adopts Kernel Canonical Correlation Analysis (KCCA) to build a nonlinear mapping between the signal-vector space and the physical location space by transforming data in both spaces into their canonical features. This allows the pairwise similarity of samples in both spaces to be maximally correlated using kernels. We use a Gaussian kernel to adapt to the noisy characteristics of signal strengths and a Matérn kernel to sense the changes in physical locations. By using real data collected in an 802.11 wireless LAN environment, we achieve accurate location estimation for pervasive computing while requiring a much smaller set of labeled training data than previous methods.
机译:在本文中,我们提出了一种对高度不确定和非线性的数据进行多维矢量回归的算法,然后将其应用于无线局域网(WLAN)中的室内位置估计问题。我们的目标是在信号空间和物理空间之间获得准确的映射,而无需进行过多的人工校准工作。传统上,这种位置估计问题是通过在人工标记的数据上训练的概率模型解决的,而概率模型的获取成本很高。相比之下,我们的算法采用核规范相关分析(KCCA),通过将两个空间中的数据转换为其规范特征,从而在信号向量空间与物理位置空间之间建立非线性映射。这允许使用内核最大程度地关联两个空间中样本的成对相似性。我们使用高斯核来适应信号强度的噪声特征,并使用Matérn核来感知物理位置的变化。通过使用在802.11无线LAN环境中收集的真实数据,我们可以为普适计算实现准确的位置估计,同时与以前的方法相比,所需的标记训练数据集要少得多。

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