Yang Tian, Cabani Adnane, Chafouk Houcine
Normandie Université, UNIROUEN, ESIGELEC, IRSEEM, 76000 Rouen, France.
Sensors (Basel). 2021 Dec 3;21(23):8086. doi: 10.3390/s21238086.
Recently, various novel scenarios have been studied for indoor localization. The trilateration is known as a classic theoretical model of geometric-based indoor localization, with uniform RSSI data that can be transferred directly into distance ranges. Then, a trilateration solution can be algebraically acquired from theses ranges, in order to fix user's actual location. However, the collected RSSI or other measurement data should be further processed and classified to lower the localization error rate, instead of using the raw data influenced by multi-path effect, multiple nonlinear interference and noises. In this survey, a large number of existing techniques are presented for different indoor network structures and channel conditions, divided as LOS (light-of-sight) and NLOS (non light-of-sight). Besides, the input measurement data such as RSSI (received signal strength indication), TDOA (time difference of arrival), DOA (distance of arrival), and RTT (round trip time) are studied towards different application scenarios. The key localization techniques like RSSI-based fingerprinting technique are presented using supervised machine learning methods, namely SVM (support vector machine), KNN (K nearest neighbors) and NN (neural network) methods, especially in an offline training phase. Other unsupervised methods as isolation forest, k-means, and expectation maximization methods are utilized to further improve the localization accuracy in online testing phase. For Bayesian filtering methods, apart from the basic linear Kalman filter (LKF) methods, nonlinear stochastic filters such as extended KF, cubature KF, unscented KF and particle filters are introduced. These nonlinear methods are more suitable for dynamic localization models. In addition to the localization accuracy, the other important performance features and evaluation aspects are presented in our paper: scalability, stability, reliability, and the complexity of proposed algorithms is compared in this survey. Our paper provides a comprehensive perspective to compare the existing techniques and related practical localization models, with the aim of improving localization accuracy and reducing the complexity of the system.
最近,人们对室内定位的各种新场景进行了研究。三边测量法是基于几何的室内定位的经典理论模型,其具有均匀的接收信号强度指示(RSSI)数据,可直接转换为距离范围。然后,可以从这些范围代数地获得三边测量解,以确定用户的实际位置。然而,收集到的RSSI或其他测量数据应进一步处理和分类,以降低定位错误率,而不是使用受多径效应、多重非线性干扰和噪声影响的原始数据。在本次综述中,针对不同的室内网络结构和信道条件,提出了大量现有技术,分为视距(LOS)和非视距(NLOS)。此外,还针对不同的应用场景研究了诸如接收信号强度指示(RSSI)、到达时间差(TDOA)、到达距离(DOA)和往返时间(RTT)等输入测量数据。使用监督机器学习方法,即支持向量机(SVM)、K近邻(KNN)和神经网络(NN)方法,介绍了基于RSSI的指纹识别技术等关键定位技术,特别是在离线训练阶段。在在线测试阶段,利用隔离森林、k均值和期望最大化等其他无监督方法进一步提高定位精度。对于贝叶斯滤波方法,除了基本的线性卡尔曼滤波器(LKF)方法外,还引入了扩展卡尔曼滤波器、容积卡尔曼滤波器、无迹卡尔曼滤波器和粒子滤波器等非线性随机滤波器。这些非线性方法更适合动态定位模型。除了定位精度外,本文还介绍了其他重要的性能特征和评估方面:可扩展性、稳定性、可靠性,并在本次综述中比较了所提出算法的复杂性。本文提供了一个全面的视角来比较现有技术和相关的实际定位模型,旨在提高定位精度并降低系统复杂性。