Opportunistically supported ubiquitous localization: Machine learning enhancements

Michela Papandrea
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引用次数: 1

Abstract

A lot of work has already been done on the area of localization of mobile nodes, but there still exist numerous open issues. The constant progress in technology gives the opportunity to obtain efficient, in terms of cost and accuracy, localization services, and likewise it increases the number of challenges to be considered. The main problems related to the localization of mobile devices concern with the heterogeneity of visited environments and interested hardware platforms, the energy and computational constraints imposed by the devices and the choice of appropriate tracking technologies. The most important goal in the localization research area is to provide a very accurate positioning service, regardless the surrounding environment. For my PhD research I propose an innovative system for ubiquitous localization which does not rely on backend servers (each node performs a self-localization) and whose reference platform is a new generation mobile phone. This system exploits the sensors embedded on such devices to perform positioning and it is further assisted by opportunistic exchange of information among neighboring nodes. By means of this system, a node is able to classify its movements by continuously refining a self-movement-model (machine learning techniques), thus assisting the localization procedure itself. The purpose of this document is to briefly describe the state of the art in localization, and to outline my planned PhD research.
机会主义支持无处不在的本地化:机器学习增强
在移动节点的本地化领域已经做了大量的工作,但仍然存在许多悬而未决的问题。技术的不断进步为在成本和准确性方面获得高效的本地化服务提供了机会,同时也增加了需要考虑的挑战的数量。与移动设备本地化相关的主要问题涉及访问环境和感兴趣的硬件平台的异质性,设备施加的能量和计算限制以及适当跟踪技术的选择。定位研究领域最重要的目标是提供非常精确的定位服务,而不考虑周围环境。在我的博士研究中,我提出了一个创新的泛在定位系统,它不依赖于后端服务器(每个节点执行一个自我定位),其参考平台是新一代的手机。该系统利用嵌入在此类设备上的传感器进行定位,并通过相邻节点之间的机会性信息交换进一步辅助。通过该系统,节点能够通过不断改进自运动模型(机器学习技术)对其运动进行分类,从而辅助定位过程本身。本文档的目的是简要描述本地化的现状,并概述我计划的博士研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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