基于PCA和KNN的PIR传感器网络活动识别改进

Rofif Irsyad Fakhruddin, M. Abdurohman, Aji Gautama Putrada
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引用次数: 7

摘要

通过使用低成本的被动红外(PIR)传感器检测运动,与活动识别(AR)结合形成无线传感器网络(WSN),可以检测到每个房间存在的活动或运动,并可用于健康,家庭自动化和安全目的。其他研究已经证明,层次隐马尔可夫模型(HHMM)方法和后验方法比无监督分类方法(如Naïve Bayes)更准确,但在另一项研究中,无监督方法(如k近邻(KNN))可以显示出高性能,因为之前,数据集经过预处理步骤。本研究的目的是利用PCA作为预处理方法来提高基于PIR传感器网络的AR的性能,并与以往研究的AR性能进行比较。此外,还使用KNN作为AR的分类方法,为此需要构建PIR传感器网络。4个PIR传感器节点用于整个测试环境屋。为了建立KNN模型,在21天的时间里,从所有PIR传感器收集了37150个数据。基于KNN模型的AR分类准确率为0.94。本研究中提出的PCA-KNN比其他使用PIR传感器网络实现AR的研究具有更高的性能。与其他同样实现AR但具有更复杂传感器组合的研究相比,所提出的方法也是一种低成本的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving PIR Sensor Network-Based Activity Recognition with PCA and KNN
With the use of low-cost passive infrared (PIR) sensors in detecting movement, forming a wireless sensor network (WSN) combined with activity recognition (AR), activities or movements that exist in each room can be detected and can be used for health, home automation, and security purposes. Other studies have proven that the hierarchical hidden Markov model (HHMM) method, an a posteriori method is more accurate than unsupervised classification methods such as Naïve Bayes but in another study, unsupervised methods such as k-nearest neighbors (KNN) can show high performance because previously, the datasets go through pre-processing steps. The purpose of this study is to improve the performance of PIR sensor network-based AR using PCA as a pre-processing method and compare the performance with AR in previous studies. In addition, KNN is used as the classification method for AR. To do that, a PIR sensor network needs to be built. 4 PIR sensor nodes are used throughout a test environment house. There are 37150 data that has been collected from all PIR sensors stored in a span of 21 days to build the KNN model. The accuracy results obtained from the KNN model for AR classification is 0.94. The PCA-KNN proposed in this research proves to have higher performance than other studies that also implement AR with PIR sensor network. The proposed method is also a low-cost solution compared to other studies that also implement AR but with more complex sensor combinations.
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