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GreenLocs: An Energy-Efficient Indoor Place Identification Framework

机译:GreenLocs:高效节能的室内场所识别框架

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摘要

Understanding indoor mobility patterns of people is important in applications such as targeted advertisement, microclimate control, and delivery of anticipatory notifications. In this article, we devise GreenLocs, a nonparametric, profiling-free, yet lightweight and energy-efficient inference framework, to identify recurring and new places that mobile users visit indoor. Combining WiFi scans and accelerometer readings, GreenLocs can accurately decide a new place and a revisited place with just a few radio signal strength (RSS) samples. GreenLocs consists of three major building blocks, namely, missing data handling algorithms, a nonparametric Bayesian inference model, and a stopping rule, which significantly increases the energy efficiency of the system. GreenLocs is shown to be robust to signal variations and missing data through experimental evaluations using traces collected from mobile phones of different brands/models.
机译:在有针对性的广告,微气候控制和预期通知的传递等应用中,了解人员的室内移动模式非常重要。在本文中,我们设计了GreenLocs,这是一个非参数,无配置,但轻量级且节能的推理框架,用于识别移动用户在室内访问的重复地点和新地点。结合WiFi扫描和加速度计读数,GreenLocs只需几个无线电信号强度(RSS)样本就可以准确地确定一个新地点和一个重新访问的地点。 GreenLocs由三个主要构建块组成,即缺少数据处理算法,非参数贝叶斯推理模型和停止规则,这将显着提高系统的能源效率。通过使用从不同品牌/型号的手机收集到的迹线进行的实验评估,GreenLocs可以很好地发出变化和丢失数据的信号。

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