基于环境传感器的家庭活动识别特征提取技术比较

Aiguo Wang, Yue Meng, Liang Zhao, Jinjun Liu, Guilin Chen
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引用次数: 0

摘要

基于环境传感器的家居活动识别在智能家居的设计和开发中发挥着至关重要的作用,能够更好、更积极地应对人口老龄化。从机器学习的角度来看,如何从传感器数据中提取特征在很大程度上决定了数据驱动的人类活动识别器的能力。然而,很少有研究系统地研究如何对流传感器事件进行编码。为此,本文对不同的活动识别特征提取技术进行了比较。具体来说,我们探索了两种类型的特征表示(即统计特征和结构特征),并评估了它们的单一使用和联合使用。此外,我们还通过实验分析了窗口大小对预测精度的影响。最后,我们用15种不同的特征编码和6种分类器在3个公共数据集上进行了实验。结果表明,不同特征的联合使用通常可以获得更高的精度,并且间隔60秒的窗口大小可以实现更好的精度-速度折衷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Feature Extraction Techniques for Ambient Sensor-based In-home Activity Recognition
Ambient sensor-based in-home activity recognition plays a crucial role in the design and development of a smart home to better and actively respond to population aging. From the perspective of machine learning, how to extract features from sensor data largely determines the power of a data-driven human activity recognizer. However, few studies systematically investigate how to encode streaming sensor events. To this end, we herein conduct a comparison of different feature extraction techniques for activity recognition. Specifically, we explore two types of feature representations (i.e., statistical features and structural features) and evaluate their single use and joint use. Besides, we experimentally analyze the impact of window size on prediction accuracy. Finally, we perform experiments on three public datasets with 15 different feature encodings and 6 classifiers. Results show that the joint use of different features generally obtains enhanced accuracy and that the interval 60s of window size achieves a better accuracy-speed tradeoff.
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