论文标题
使用智能手机传感器的高级自我意识导航的上下文检测
Context Detection for Advanced Self-Aware Navigation using Smartphone Sensors
论文作者
论文摘要
导航和定位系统取决于操作环境和主机车辆或用户的行为。环境确定可用于定位的无线电信号的类型和质量,该行为可以为导航解决方案提供其他信息。为了在不同的上下文中操作,通过检测操作上下文并相应地配置定位系统,一种上下文自适应导航解决方案引入了自我意识的元素。本文介绍了整个环境和行为环境的检测,建立了情境自适应导航系统的基础。行为环境是使用加速度计,陀螺仪,磁力计和晴雨表的测量方法通过监督机器学习算法进行分类的,从而产生总体95%的分类精度。然后实现连通性依赖性过滤器,以改善行为检测结果。从GNSS测量值中检测到环境环境。它们使用概率支持向量机(SVM)将它们分为室内,中间和室外类别,然后是用于时间域滤波的隐藏Markov模型(HMM)。由于永远不会有完全可靠的上下文检测,因此本文还展示了环境和行为关联如何有助于减少上下文确定算法选择不正确上下文的机会。最后,提出的上下文确定算法在一系列多上下文方案中进行了测试。
Navigation and positioning systems dependent on both the operating environment and the behaviour of the host vehicle or user. The environment determines the type and quality of radio signals available for positioning and the behaviour can contribute additional information to the navigation solution. In order to operate across different contexts, a context-adaptive navigation solution introduces an element of self-awareness by detecting the operating context and configuring the positioning system accordingly. This paper presents the detection of both environmental and behavioural contexts as a whole, building the foundation of a context-adaptive navigation system. Behavioural contexts are classified using measurements from accelerometers, gyroscopes, magnetometers and the barometer by supervised machine learning algorithms, yielding an overall 95% classification accuracy. A connectivity dependent filter is then implemented to improve the behavioural detection results. Environmental contexts are detected from GNSS measurements. They are classified into indoor, intermediate and outdoor categories using a probabilistic support vector machine (SVM), followed by a hidden Markov model (HMM) used for time-domain filtering. As there will never be completely reliable context detection, the paper also shows how environment and behaviour association can contribute to reducing the chances of the context determination algorithms selecting an incorrect context. Finally, the proposed context-determination algorithms are tested in a series of multi-context scenarios.