Use of ECDF-based features and ensemble of classifiers to accurately detect mobility activities of people using accelerometers

Megha Vij, Vinayak Naik, Venkata M. V. Gunturi
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引用次数: 2

Abstract

We look at the problem of using accelerometer in smartphones to detect mobility activities of users. The activities are internally composed of several simple activities. One can perform the task of distinguishing the activities using classic classification techniques with two different data representations namely, statistical features and ECDF-based features. Our recommendation in this paper is to use the latter as it suits better for mobility activities. Our major contribution is to explore the challenge of class imbalance in detecting mobility activities. To handle that challenge, we propose use of an ensemble of a classification model. It improves accuracy of detection over standalone classification models. To evaluate performance of the recommended technique, we use transportation by a metro train as a running case study. We consider two activities during the metro train travel. They are (a) whether user is at a metro train station or (b) in a metro train. Our recommended technique results in precision of 98% for the case study. It is significantly more than the state-of-the-art value of 70% for a similar case study. This case study finds its applications in the area of smart city analytics, for instance, our solution could be used to estimate rush at metro stations. In the long run, it can also be used to enhance navigation services to account for delays at metro stations into their algorithms.
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使用基于ecdf的特征和分类器集合来准确地检测使用加速度计的人的移动活动
我们着眼于在智能手机中使用加速计来检测用户移动活动的问题。这些活动在内部由几个简单的活动组成。可以使用具有两种不同数据表示(即统计特征和基于ecdf的特征)的经典分类技术来执行区分活动的任务。我们在本文中的建议是使用后者,因为它更适合流动性活动。我们的主要贡献是探索阶级不平衡在检测流动性活动中的挑战。为了应对这一挑战,我们建议使用分类模型的集成。它比独立的分类模型提高了检测的准确性。为了评估所推荐的技术的性能,我们使用地铁列车作为运行案例研究。我们考虑地铁旅行中的两种活动。它们是(a)用户是否在地铁火车站或(b)在地铁列车上。我们推荐的技术在案例研究中精度达到98%。这远远超过了一个类似案例研究中70%的最先进的价值。本案例研究发现了其在智慧城市分析领域的应用,例如,我们的解决方案可用于估计地铁站的高峰。从长远来看,它还可以用来增强导航服务,将地铁站的延误考虑到算法中。
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