首页> 外文会议>IEEE Global Communications Conference >Qnalyzer: Queuing Recognition Using Accelerometer and Wi-Fi Signals
【24h】

Qnalyzer: Queuing Recognition Using Accelerometer and Wi-Fi Signals

机译:Qnalyzer:使用加速度计和Wi-Fi信号进行排队识别

获取原文

摘要

Queuing recognition is a recently new raised research topic, which uses sensors of smartphones to automatically recognize human queuing behaviors. However, existing collaborative approaches need to exchange sensor data among nearby smartphones, causing extra communication overheads and even delay. In view of this, this work proposes a new framework called Qnalyzer for queuing recognition using accelerometer and Wi-Fi signals. It consists of three tiers. The first tier is run by each individual smartphone to identify each user's context without exchanging data with nearby smartphones. A new algorithm called QCF (Queuer and non-queuer ClassiFier) is proposed, which considers mixture features of accelerometer and Wi-Fi signals to effectively identify whether the user is queuing or not. The second tier is an algorithm called QCT (Queuers ClusTering) running at the server side to effectively identify which queuers belong to which queues based on users' movement features. The third tier is an estimation model called QPE (Queue Property Estimation) for measuring waiting time, service time, and queue lengths. The Qnalyzer prototype on Android smartphones and the corresponding performance evaluations under real- life queuing scenarios are implemented. The extensive experiment results show that Qnalyzer achieves good performance with high accuracy.
机译:排队识别是一个新近提出的研究主题,它使用智能手机的传感器来自动识别人的排队行为。但是,现有的协作方法需要在附近的智能手机之间交换传感器数据,从而导致额外的通信开销甚至延迟。有鉴于此,这项工作提出了一个名为Qnalyzer的新框架,用于使用加速度计和Wi-Fi信号进行排队识别。它由三层组成。第一层由每个单独的智能手机运行,以识别每个用户的上下文,而无需与附近的智能手机交换数据。提出了一种新的算法QCF(队列和非队列ClassiFier),该算法考虑了加速度计和Wi-Fi信号的混合特征,以有效地识别用户是否在排队。第二层是在服务器端运行的称为QCT(队列ClusTering)的算法,可以根据用户的移动特征有效地识别哪些队列属于哪个队列。第三层是称为QPE(队列属性估计)的估计模型,用于测量等待时间,服务时间和队列长度。实施了Android智能手机上的Qnalyzer原型以及在实际排队情况下的相应性能评估。广泛的实验结果表明,Qnalyzer具有良好的性能和高精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号