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Activity Recognition Using Graphical Features from Smart Phone Sensor

机译:活动识别使用智能手机传感器的图形特征

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We develop a graphical feature-based framework that collects data from different kinds of sensor networks, represents the sensor network data as a graph, extracts graphical features from the graph representation, and adds those features to a set of non-graphical features that are typical for the application. Our hypothesis is that the addition of a structural representation and transitional features will improve performance for the corresponding prediction tasks of different networks. We apply our graphical feature-based approach on smart phone GPS sensor data to predict activities performed by phone users. We represent the location category corresponding to each GPS value as a node and movement of users from one GPS location to another as an edge in graph. Then we extract graphical features such as existence of nodes and edges from the graph representation and add them to basic sensor data features coming from the smart phone. We find that using this augmented feature set improves activity recognition accuracy by 7.27% compared to using only basic non-graphical features with feature set augmented with existence of nodes performing the best.
机译:我们开发了一个基于图形的特征​​框架,从不同类型的传感器网络收集数据,表示传感器网络数据作为图形,从图形表示中提取图形特征,并将这些功能添加到典型的一组非图形功能适用于申请。我们的假设是添加结构表示和过渡特征将提高不同网络的相应预测任务的性能。我们在智能手机GPS传感器数据上应用了基于图形的方法,以预测电话用户执行的活动。我们将与每个GPS值相对应的位置类别作为节点,用户从一个GPS位置移动到另一个GPS位置作为图形中的边缘。然后,我们从图形表示中提取图形特征,例如节点的存在和边缘,并将其添加到来自智能手机的基本传感器数据特征。我们发现,与使用具有功能集的功能集的基本非图形功能相比,使用此增强功能集可提高活动识别准确性7.27%。

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