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One-Class Classification-Based Real-Time Activity Error Detection in Smart Homes.基于单类分类的智能家居实时活动错误检测
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从传感器数据中学习活动预测器:算法、评估及应用

Learning Activity Predictors from Sensor Data: Algorithms, Evaluation, and Applications.

作者信息

Minor Bryan, Doppa Janardhan Rao, Cook Diane J

机构信息

School of Electrical Engineering and Computer Science, Washington State University, Pullman, WA, 99164.

出版信息

IEEE Trans Knowl Data Eng. 2017 Dec 1;29(12):2744-2757. doi: 10.1109/TKDE.2017.2750669. Epub 2017 Sep 11.

DOI:10.1109/TKDE.2017.2750669
PMID:29456436
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5813841/
Abstract

Recent progress in Internet of Things (IoT) platforms has allowed us to collect large amounts of sensing data. However, there are significant challenges in converting this large-scale sensing data into decisions for real-world applications. Motivated by applications like health monitoring and intervention and home automation we consider a novel problem called , where the goal is to predict future activity occurrence times from sensor data. In this paper, we make three main contributions. First, we formulate and solve the activity prediction problem in the framework of imitation learning and reduce it to a simple regression learning problem. This approach allows us to leverage powerful regression learners that can reason about the relational structure of the problem with negligible computational overhead. Second, we present several metrics to evaluate activity predictors in the context of real-world applications. Third, we evaluate our approach using real sensor data collected from 24 smart home testbeds. We also embed the learned predictor into a mobile-device-based activity prompter and evaluate the app for 9 participants living in smart homes. Our results indicate that our activity predictor performs better than the baseline methods, and offers a simple approach for predicting activities from sensor data.

摘要

物联网(IoT)平台的最新进展使我们能够收集大量传感数据。然而,将这种大规模传感数据转化为实际应用决策面临重大挑战。受健康监测与干预以及家庭自动化等应用的启发,我们考虑一个名为 的新问题,其目标是根据传感器数据预测未来活动发生时间。在本文中,我们做出了三项主要贡献。首先,我们在模仿学习框架中制定并解决活动预测问题,并将其简化为一个简单的回归学习问题。这种方法使我们能够利用强大的回归学习器,以可忽略不计的计算开销对问题的关系结构进行推理。其次,我们提出了几个指标,用于在实际应用背景下评估活动预测器。第三,我们使用从24个智能家居测试平台收集的真实传感器数据评估我们的方法。我们还将学习到的预测器嵌入到基于移动设备的活动提示器中,并对9名居住在智能家居中的参与者的应用程序进行评估。我们的结果表明,我们的活动预测器比基线方法表现更好,并提供了一种从传感器数据预测活动的简单方法。