Multi-domain Feature Extraction for Human Activity Recognition Using Wearable Sensors

Aiguo Wang, Yue Meng, Jinjun Liu, Shenghui Zhao, Guilin Chen
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Abstract

The extraction and use of features from the raw sensor data plays an extremely crucial role in determining the recognition performance of an activity recognizer. Existing studies aim to train an accurate prediction model by extracting different features, however, few of them systematically investigate the power of features from different domains when they are used separately or jointly. To this end, we conduct a comparative study on multi-domain feature extraction for human activity recognition. Specifically, we first extract features from the time-, frequency-, and wavelet-domains, and then use different combinations of the three domain features to build activity recognizers. Finally, comparative experiments are performed on two activity recognition datasets and four classification models are used to avoid selection bias. Results indicate the superiority of using time-domain or frequency-domain features over wavelet features in terms of prediction performance and also show that the simultaneous use of multi-domain features generally generalizes better across datasets and classifiers, indicating that they, to a certain extent, contain complementary feature information.
基于可穿戴传感器的人体活动识别多域特征提取
从原始传感器数据中提取和使用特征对活动识别器的识别性能起着至关重要的作用。现有的研究旨在通过提取不同的特征来训练准确的预测模型,但很少有研究系统地研究不同领域的特征在单独或联合使用时的作用。为此,我们对多域特征提取用于人体活动识别进行了比较研究。具体来说,我们首先从时间域、频率域和小波域提取特征,然后使用三个域特征的不同组合来构建活动识别器。最后,在两个活动识别数据集上进行了对比实验,并使用了四种分类模型来避免选择偏差。结果表明,使用时域或频域特征在预测性能上优于小波特征,同时使用多域特征在数据集和分类器之间的泛化效果更好,这表明它们在一定程度上包含互补的特征信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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