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Adaptive Fingerprinting in Multi-Sensor Fusion for Accurate Indoor Tracking

机译:多传感器融合中的自适应指纹技术,可进行准确的室内跟踪

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摘要

Indoor Localization and Tracking have become an attractive research topic because of the wide range of potential applications. These applications are highly demanding in terms of estimation accuracy and rise a challenge due to the complexity of the scenarios modeled. Approaches for these topics are mainly based on either deterministic or probabilistic methods, such as Kalman or Particles Filter. These techniques are improved by fusing information from different sources, such as wireless or optical sensors. In this paper, a novel MUlti-sensor Fusion using adaptive fingerprint (MUFAF) algorithm is presented and compared with several multi-sensor indoor localization and tracking methods. MUFAF is mainly divided in four phases: first, a target position estimation (TPE) process is performed by every sensor; second, a target tracking process stage; third, a multi-sensor fusion combines the sensor information; and finally, an adaptive fingerprint update (AFU) is applied. For TPE, a complete environment characterization in combination with a Kernel density estimation technique is employed to obtain object position. A Modified Kalman Filter is applied to TPE output in order to smooth target routes and avoid outliers effect. Moreover, two fusion methods are described in this paper: track-to-track fusion and Kalman sensor group fusion. Finally, AFU will endow the algorithm with responsiveness to environment changes by using Kriging interpolation to update the scenario fingerprint. MUFAF is implemented and compared in a test bed showing that it provides a significant improvement in estimation accuracy and long-term adaptivity to condition changes.
机译:由于潜在的广泛应用,室内定位和跟踪已成为一个有吸引力的研究主题。这些应用对估计的准确性有很高的要求,并且由于建模场景的复杂性而带来了挑战。这些主题的方法主要基于确定性或概率性方法,例如卡尔曼或粒子滤波。通过融合来自不同来源(例如无线或光学传感器)的信息,可以改善这些技术。本文提出了一种新的采用自适应指纹(MUFAF)算法的多传感器融合方法,并将其与几种多传感器室内定位和跟踪方法进行了比较。 MUFAF主要分为四个阶段:首先,每个传感器都执行目标位置估计(TPE)过程;第二,目标跟踪过程阶段;第三,多传感器融合结合了传感器信息。最后,应用自适应指纹更新(AFU)。对于TPE,结合内核密度估计技术使用完整的环境表征来获取对象位置。修改后的卡尔曼滤波器被应用于TPE输出,以平滑目标路线并避免离群值影响。此外,本文描述了两种融合方法:轨到轨融合和卡尔曼传感器组融合。最后,AFU将通过使用Kriging插值来更新场景指纹,使算法对环境变化具有响应能力。在测试平台上对MUFAF进行了实施和比较,结果表明,MUFAF大大提高了估算精度,并能长期适应条件变化。

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