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Improved Wknn Indoor Positioning Algorithm Based On C-Means And Chi-Square Distance

机译:基于C均值和卡方距离的改进的Wknn室内定位算法

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Because of the rapid development of smart cities, WLAN-based location services have also become commonplace. Among the known positioning algorithms, The classical KNN algorithm calculates the Euclidean distance between the undetermined locus and the reference point in the fingerprint database, and choose K points with the smallest Euclidean distance, and takes the arithmetic average of these K points to obtain the predicted value of the undetermined locus; WKNN algorithm is a KNN algorithm improved by weighting, it calculates the predicted value by assigning different weights to the K points. However, such algorithms only consider the absolute distance between RSS vectors at each location. it is common to ignore the relative distance between RSS vectors at various locations. And they can only give each AP the same weight 1/K[1, 2]. In order to overcome the deficiency of the absolute distance of Euclidean distance method, an improved WKNN indoor positioning algorithm based on c-means and chi-square distance was proposed. This method first USES c-means to cluster the fingerprint database, then calculates the weight of each AP with the chi-square distance and sensitivity method, and then corrects the chi-square distance with this weight. The prediction results of the weighted chi-square distance combined with the WKNN treatment registration point show that the accuracy of this method is higher than the traditional WKNN.
机译:由于智慧城市的快速发展,基于WLAN的位置服务也变得司空见惯。在已知的定位算法中,经典的KNN算法计算未确定轨迹与指纹数据库中参考点之间的欧式距离,并选择欧式距离最小的K点,并取这K点的算术平均值以获得预测值。未确定地点的价值; WKNN算法是一种通过加权改进的KNN算法,它通过为K点分配不同的权重来计算预测值。但是,此类算法仅考虑每个位置的RSS向量之间的绝对距离。通常会忽略各个位置的RSS向量之间的相对距离。而且他们只能给每个AP相同的权重1 / K [1、2]。为了克服欧氏距离法绝对距离的不足,提出了一种基于c均值和卡方距离的改进的WKNN室内定位算法。该方法首先使用c均值对指纹数据库进行聚类,然后使用卡方距离和灵敏度方法计算每个AP的权重,然后使用此权重校正卡方距离。加权卡方距离结合WKNN处理注册点的预测结果表明,该方法的准确性高于传统WKNN。

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