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An Indoor Positioning Method Based on Regression Models with Compound Location Fingerprints

机译:基于复合位置指纹回归模型的室内定位方法

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An indoor positioning method is proposed and evaluated. The method combines location fingerprinting and dead reckoning differently from conventional combinations. It utilizes a compound location fingerprint, which is composed of radio fingerprints at multiple points of time, that is, at multiple positions, and displacements between them estimated by dead reckoning. To avoid accumulated errors from dead reckoning, the method uses short-range dead reckoning. The method was evaluated in a student room whose size was 11 × 5 m and had furniture. Six Bluetooth beacons were placed in the room. The received signal strength indicator (RSSI) values of the beacons were collected at 28 measuring points, which were points of intersection on a 1-m by 1-m grid where no obstacles existed. A compound location fingerprint is composed of RSSI vectors at two points and a displacement vector between them. A support vector machine (SVM) and random forests (RF) were used to build regression models. The root mean square error (RMSE) of position estimation with SVM and RF was respectively 2.35 and 0.80 m. These errors were lower than those with a single-point baseline model, where a feature vector is composed of only RSSI values at one location. The results suggest that the proposed method is effective in indoor environments. We also discuss the relationship between the permissible error tolerance and cumulative percentages of correct answers, and the influence of dead reckoning errors on RMSE.
机译:提出和评估室内定位方法。该方法将位置指纹识别和死亡与传统组合不同地估算。它利用复合位置指纹,其由多个时间点的无线电指纹组成,即在多个位置和通过死亡估计的估计之间的位移。为避免从死亡估算中累积的错误,该方法使用短程死亡再次估算。该方法在尺寸为11×5米的学生室中进行评估,并具有家具。六个蓝牙信标被放在房间里。在28个测量点收集信标的接收信号强度指示符(RSSI)值,其在1-m栅格上是1米的交叉点,其中不存在障碍物。复合位置指纹由RSSI向量组成,在两个点和它们之间的位移向量组成。支持向量机(SVM)和随机林(RF)用于构建回归模型。使用SVM和RF的位置估计的根均方误差(RMSE)分别为2.35和0.80米。这些错误低于单点基线模型的错误,其中特征向量仅由一个位置的RSSI值组成。结果表明,该方法在室内环境中是有效的。我们还讨论了正确答案的允许误差容差和累积百分比之间的关系,以及DEAC监测误差对RMSE的影响。

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