PAMS: A new position-aware multi-sensor dataset for human activity recognition using smartphones

Pegah Esfahani, H. Malazi
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引用次数: 18

Abstract

Nowadays smartphones are ubiquitous in various aspects of our lives. The processing power, communication bandwidth, and the memory capacity of these devices have surged considerably in recent years. Besides, the variety of sensor types, such as accelerometer, gyroscope, humidity sensor, and bio-sensors, which are embedded in these devices, opens a new horizon in self-monitoring of physical daily activities. One of the primary steps for any research in the area of detecting daily life activities is to test a detection method on benchmark datasets. Most of the early datasets limited their work to collecting only a single type of sensor data such as accelerometer data. While some others do not consider age, weight, and gender of the subjects who have participated in collecting their activity data. Finally, part of the previous works collected data without considering the smartphone's position. In this paper, we introduce a new dataset, called Position-Aware Multi-Sensor (PAMS). The dataset contains both accelerometer and gyroscope data. The gyroscope data boosts the accuracy of activity recognition methods as well as enabling them to detect a wider range of activities. We also take the user information into account. Based on the biometric attributes of the participants, a separate learned model is generated to analyze their activities. We concentrate on several major activities, including sitting, standing, walking, running, ascending/descending stairs, and cycling. To evaluate the dataset, we use various classifiers, and the outputs are compared to the WISDM. The results show that using aforementioned classifiers, the average precision for all activities is above 88.5%. Besides, we measure the CPU, memory, and bandwidth usage of the application collecting data on the smartphone.
PAMS:一种新的位置感知多传感器数据集,用于智能手机的人类活动识别
如今,智能手机在我们生活的各个方面无处不在。近年来,这些设备的处理能力、通信带宽和内存容量大幅增加。此外,这些设备中嵌入的各种传感器类型,如加速度计、陀螺仪、湿度传感器、生物传感器等,为日常身体活动的自我监测开辟了新的领域。在日常生活活动检测领域进行任何研究的主要步骤之一是在基准数据集上测试检测方法。大多数早期的数据集限制了他们的工作,只收集单一类型的传感器数据,如加速度计数据。而另一些人则不考虑参与收集活动数据的受试者的年龄、体重和性别。最后,部分之前的工作收集的数据没有考虑到智能手机的位置。在本文中,我们引入了一个新的数据集,称为位置感知多传感器(PAMS)。数据集包含加速度计和陀螺仪数据。陀螺仪数据提高了活动识别方法的准确性,并使它们能够检测到更大范围的活动。我们也考虑到用户信息。基于参与者的生物特征属性,生成一个单独的学习模型来分析他们的活动。我们专注于几项主要活动,包括坐、站、走、跑、上下楼梯和骑自行车。为了评估数据集,我们使用了各种分类器,并将输出与WISDM进行比较。结果表明,使用上述分类器,所有活动的平均精度在88.5%以上。此外,我们还测量了在智能手机上收集数据的应用程序的CPU、内存和带宽使用情况。
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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