For decades, the determination of an objects location has been implemented utilizing different technologies. Despite GPS (Global Positioning System) provides a scalable efficient and cost effective location services however the satellite emitted signals cannot be exploited indoor to effectively determine the location. In contrast to GPS which is a cost effective localization technology for outdoor locations several technologies have been studied for indoor localization. These include Wireless Fidelity (Wi-Fi) Bluetooth Low Energy (BLE) and Received Signal Strength Indicator (RSSI) etc. This paper presents an enhanced method of using RSSI as a mean to determine an objects location by applying some Machine Learning (ML) concepts. The binary classification is defined by considering the adjacency of the coordinates denoting objects locations. The proposed features were tested empirically via multiple classifiers that achieved a maximum of 96 percent accuracy.
翻译:尽管全球定位系统(全球定位系统)提供了可扩展的高效和成本效益高的定位服务,但卫星发出的信号无法在室内加以利用,以有效确定位置。与全球定位系统相比,室外地点的成本效益高的本地化技术是室外地点的成本效益高的定位技术,但已经对若干技术进行了室内本地化研究,其中包括无线菲力(Wi-Fi)蓝牙低能和接收信号强度指标(RSSI)等。本文件介绍了一种强化的方法,即使用RSSI作为使用某些机器学习(ML)概念确定物体位置的手段。二元分类是通过考虑坐标对目标位置进行脱钩的相邻性来界定的。拟议特征通过多个分类器进行实验性测试,这些分类器达到最高96%的精确度。