论文标题
通过贝叶斯过滤提高BLE信标接近度估计精度
Improving BLE Beacon Proximity Estimation Accuracy through Bayesian Filtering
论文作者
论文摘要
万物的相互联系正在不断扩大,这使每个人都可以提高与周围环境的互动水平。物联网(IoT)设备用于多种上下文感知的应用程序,例如基于接近的服务(PBS)和基于位置的服务(LBS)。对于这些系统的执行,必须拥有可靠的硬件并以高精度来预测用户在该区域的位置,以便在小区域中区分个人。已经提出了使用接收的信号强度指标(RSSI)的各种无线解决方案为室内环境提供PBS和LB,尽管每个解决方案都呈现出自己的缺点。在这项工作中,蓝牙低能(BLE)信标根据其在接近度估计中的准确性进行了检查。具体而言,开发了一种移动应用程序以及三种贝叶斯过滤技术,以提高BLE信标接近度估计精度。这包括一个卡尔曼滤波器,粒子滤清器和非参数信息(NI)滤波器。由于RSSI受环境的影响很大,因此进行了实验,以检查两个不同环境中三个流行供应商的信标的性能。用平均绝对误差(MAE)和根平方误差(RMSE)比较误差。根据实验结果,与传统过滤相比,贝叶斯过滤器可以提高邻近度估计精度,而灯塔和接收器在3 m以内。
The interconnectedness of all things is continuously expanding which has allowed every individual to increase their level of interaction with their surroundings. Internet of Things (IoT) devices are used in a plethora of context-aware application such as Proximity-Based Services (PBS), and Location-Based Services (LBS). For these systems to perform, it is essential to have reliable hardware and predict a user's position in the area with high accuracy in order to differentiate between individuals in a small area. A variety of wireless solutions that utilize Received Signal Strength Indicators (RSSI) have been proposed to provide PBS and LBS for indoor environments, though each solution presents its own drawbacks. In this work, Bluetooth Low Energy (BLE) beacons are examined in terms of their accuracy in proximity estimation. Specifically, a mobile application is developed along with three Bayesian filtering techniques to improve the BLE beacon proximity estimation accuracy. This includes a Kalman filter, a particle filter, and a Non-parametric Information (NI) filter. Since the RSSI is heavily influenced by the environment, experiments were conducted to examine the performance of beacons from three popular vendors in two different environments. The error is compared in terms of Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE). According to the experimental results, Bayesian filters can improve proximity estimation accuracy up to 30 % in comparison with traditional filtering, when the beacon and the receiver are within 3 m.