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Phone position/placement detection using accelerometer: Impact on activity recognition

机译:使用加速度计的手机位置/位置检测:对活动识别的影响

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Smart phone platforms, equipped with a rich set of sensors enable mobile sensing applications that support users for both personal sensing and large-scale community sensing. In such mobile sensing applications, the position/placement of the phone relative to the user body provides valuable context information. For example, in physical activity recognition using motion sensors, the position of the phone provides important information, since the sensors generate different signals when the phone is carried in different positions and this makes it difficult to successfully identify the activities with sensor data coming from different positions. In this paper, we investigate whether it is possible to successfully identify phone positions using only accelerometer data which is the most commonly used sensor on physical activity recognition studies, rather than using additional sensors. Additionally, we explore how much this position information increases the activity recognition accuracy compared with position independent activity recognition. For this purpose, we collected activity data from 15 participants carrying three phones in different positions, performing activities of walking, running, sitting, standing, climbing up/down stairs, transportation with a bus, making a phone call, interacting with an application on the smart phone, sending an SMS. The collected data is processed with the Random Forest classifier. According to the results of position recognition, using basic accelerometer features which are also used in the activity recognition, can achieve an accuracy of 77.34%, however, this ratio increases to 85% when basic features are combined with angular features calculated from the orientation of the phone. According to the results of the activity recognition experiments, on average the results are similar for position specific and position independent recognition. Only for the pocket case, 2% increase was observed.
机译:配备有丰富传感器的智能电话平台可支持支持用户进行个人感测和大规模社区感测的移动感测应用程序。在这样的移动感测应用中,电话相对于用户身体的位置/位置提供了有价值的上下文信息。例如,在使用运动传感器进行的体育活动识别中,电话的位置会提供重要的信息,因为当将手机放在不同的位置时,传感器会产生不同的信号,这使得难以成功地使用来自不同传感器的数据来识别活动职位。在本文中,我们调查了是否有可能仅使用加速度计数据成功识别电话位置,而加速度计数据是身体活动识别研究中最常用的传感器,而不是使用其他传感器。此外,我们探索与位置无关的活动识别相比,此位置信息在多大程度上提高了活动识别的准确性。为此,我们从15名参与者那里收集了活动数据,他们在不同的位置携带三部电话,进行步行,跑步,坐着,站立,爬上/下楼梯,乘公交车,打电话,与应用程序进行交互等活动。智能手机,发送短信。收集的数据由随机森林分类器处理。根据位置识别的结果,使用也用于活动识别的基本加速度计功能可以达到77.34%的精度,但是,当将基本功能与根据方向确定的角度特征结合使用时,该比例将提高到85%电话。根据活动识别实验的结果,平均而言,位置特定和位置独立识别的结果是相似的。仅对于口袋情况,观察到增加了2%。

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