Personal navigation using novel methods of human motion modeling

Andrew Zaydak, William D. Deninger, C. Toth, Dorota Grejner-Brezinsaka
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引用次数: 1

Abstract

The widespread use of smartphones and other personal devices provides a low cost sensing platform giving easy access to a variety of data. The availability of this rich data provides opportunities to develop new applications for personal use in areas such as health monitoring, situational awareness, and location-awareness. Of these, personal navigation and localization is of rapidly-growing commercial interest. There have been considerable research efforts to improve navigation capabilities using the embedded inertial, optical, and magnetic sensors in personal devices. This spans GPS augmentation, inertial and vision based solutions, map matching, and other sensor fusion approaches. One emerging method is to improve contextual awareness by detecting and classifying relevant human motions. This may be done by building human locomotion models primarily based on inertial and magnetic data. Once reliable models are constructed, they can be calibrated to a motion's magnitude and frequency. The derived information can then be integrated into the navigation solution; improving performance in indoor and other GPS challenged navigation environments. A case application is a human motion aware advanced pedometer. Several methods of dynamically modeling human motions have been proposed in literature. Each method has constraints and often non-obvious drawbacks. This paper first provides a survey of existing methods along with important but often overlooked details. Although the processing power of small personal devices is quickly growing, the computational load for real-time applications is still a constraint. Therefore, an evaluation of these methods based on their computational cost of reliable performance is provided. Finally, a case study with field test results will be presented. Three motions states were chosen for field tests; walking forward, walking backward, and running. Conclusions regarding suitability of personal navigation will be presented.
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使用人体运动建模新方法的个人导航
智能手机和其他个人设备的广泛使用提供了一个低成本的传感平台,可以轻松访问各种数据。这些丰富数据的可用性为在健康监测、态势感知和位置感知等领域开发供个人使用的新应用程序提供了机会。其中,个人导航和定位的商业利益正在迅速增长。在使用个人设备中的嵌入式惯性、光学和磁性传感器来提高导航能力方面,已经进行了大量的研究工作。这涵盖了GPS增强、惯性和基于视觉的解决方案、地图匹配和其他传感器融合方法。一种新兴的方法是通过检测和分类相关的人体动作来提高上下文意识。这可以通过建立主要基于惯性和磁性数据的人体运动模型来实现。一旦建立了可靠的模型,它们就可以根据运动的大小和频率进行校准。然后,可以将导出的信息集成到导航解决方案中;提高在室内和其他GPS挑战导航环境中的性能。一个案例应用是人体运动感知高级计步器。文献中提出了几种动态建模人体运动的方法。每种方法都有限制,而且往往有不明显的缺点。本文首先提供了现有方法的调查以及重要但经常被忽视的细节。尽管小型个人设备的处理能力正在快速增长,但实时应用程序的计算负荷仍然是一个限制。因此,根据这些方法的可靠性能计算成本对它们进行了评估。最后,将介绍一个具有现场测试结果的案例研究。选择三种运动状态进行现场试验;向前走,向后走,然后跑。关于个人导航的适用性的结论将被提出。
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