首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >CRAMStrack: Enhanced Nonlinear RSSI Tracking by Using Circular Multi-Sectors
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CRAMStrack: Enhanced Nonlinear RSSI Tracking by Using Circular Multi-Sectors

机译:Cramstrack:使用圆形多扇区增强非线性RSSI跟踪

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摘要

Indoor localization using a Received Signal Strength Indicator (namely, RSSI localization) has been considered a poor measurement for target tracking. The main cause of this inaccurate measurement is that RSSI's behaviors heavily depend on environmental factors. That is, one significant challenge to localization using RSSI is that the strength of a signal varies with the environment confounding wireless communications power and signal control. In this paper, we propose Circular RSSI And Multi-Sector tracking (CRAMStrack), a novel approach to reducing the uncertainty of RSSI localization by modifying the relationship of RSSI-to-Distance (RtD), based on the sectors of a circle and the position of the tracked target. Traditional RSSI tracking uses one uniform RtD relationship to locate a target whereas CRAMStrack utilizes multiple RtD responses for each wireless sensor. The paper examines CRAMStrack's tracking ability in a Euclidean space with estimation techniques. Real-world experiments demonstrate CRAMStrack in a testbed environment to locate targets in both stationary, linear, and non-linear movement patterns with single and group-based formations. The track accuracy was about 1.46m for moving targets, while CRAMStrack had a 40% reduction in Root Mean Square Error (RMSE) over Uni-RtD using neighboring sensor information.
机译:使用接收信号强度指示器的室内定位(即RSSI定位)被认为是目标跟踪的差。这种不准确的测量的主要原因是RSSI的行为严重依赖于环境因素。也就是说,使用RSSI对本地化的一个重大挑战是信号的强度随着环境混淆无线通信功率和信号控制而变化。在本文中,我们提出了循环RSSI和多扇区跟踪(Cramstrack),一种基于圈子的扇区来减少RSSI对距离(RTD)的关系来降低RSSI定位的不确定性的新方法。跟踪目标的位置。传统的RSSI跟踪使用一个统一的RTD关系来定位目标,而CramStrack利用每个无线传感器的多个RTD响应。本文审查了克拉姆斯特拉克在欧几里德空间的跟踪能力,估计技术。现实世界实验展示了在测试平面环境中的爬斜线,以定位具有单一和基于组的形成的固定式,线性和非线性运动模式中的目标。对于移动目标,轨道精度约为1.46米,而使用相邻传感器信息,克拉姆斯特拉克在UNI-RTD上具有40%的均线误差(RMSE)减少了40%。

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