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A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment

机译:建筑环境中移动RFID定位的鲁棒噪声缓解方法

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摘要

The exact location of objects, such as infrastructure, is crucial to the systematic understanding of the built environment. The emergence and development of the Internet of Things (IoT) have attracted growing attention to the low-cost location scheme, which can respond to a dramatic increasing amount of public infrastructure in smart cities. Various Radio Frequency IDentification (RFID)-based locating systems and noise mitigation methods have been developed. However, most of them are impractical for built environments in large areas due to their high cost, computational complexity, and low noise detection capability. In this paper, we proposed a novel noise mitigation solution integrating the low-cost localization scheme with one mobile RFID reader. We designed a filter algorithm to remove the influence of abnormal data. Inspired the sampling concept, a more carefully parameters calibration was carried out for noise data sampling to improve the accuracy and reduce the computational complexity. To achieve robust noise detection results, we employed the powerful noise detection capability of the random sample consensus (RANSAC) algorithm. Our experiments demonstrate the effectiveness and advantages of the proposed method for the localization and noise mitigation in a large area. The proposed scheme has potential applications for location-based services in smart cities.
机译:对象(例如基础结构)的确切位置对于系统地了解已构建环境至关重要。物联网(IoT)的出现和发展吸引了越来越多的人关注低成本定位方案,该方案可以应对智能城市中大量公共基础设施的急剧增长。已经开发了各种基于射频识别(RFID)的定位系统和降噪方法。然而,由于它们的高成本,计算复杂性和低噪声检测能力,它们中的大多数对于大面积的建筑环境是不切实际的。在本文中,我们提出了一种将低成本定位方案与一个移动RFID阅读器集成在一起的新型降噪解决方案。我们设计了一种过滤算法来消除异常数据的影响。启发了采样概念,对噪声数据采样进行了更为仔细的参数校准,以提高准确性并降低计算复杂性。为了获得可靠的噪声检测结果,我们采用了随机样本共识(RANSAC)算法的强大噪声检测功能。我们的实验证明了所提出的方法在大范围内进行定位和减少噪声的有效性和优势。拟议的方案在智能城市中基于位置的服务具有潜在的应用。

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