基于混合模型的智能手机传感器数据人体活动识别

Min-Ki Kim
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引用次数: 0

摘要

加速度计、陀螺仪、GPS和各种传感器已经在智能手机中普及。根据这一趋势,许多研究正在积极开展利用智能手机传感器获取的数据来检测和识别人类活动的研究。人体活动识别技术不仅在安保设施、医院等特定领域受到关注,而且在日常生活和娱乐领域也受到关注。在以往的研究中,研究人员从传感器获取的原始信号中手动提取有效特征用于活动识别,或者利用人工神经网络自动提取特征。然而,与其他方法相比,没有一种方法显示出显著的识别性能优势。在本研究中,提出了一种同时使用手工特征和使用CNN自动提取特征的混合CNN模型。在UCI-HAR数据集上代表六种类型的活动的实验结果显示出令人印象深刻的97.33%的准确率。结果表明,该方法在识别人类活动方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition Using Smartphone Sensor Data Based on Hybrid Model
Accelerometers, gyroscopes, GPS, and various sensors have become widespread in smartphones. In accordance with this trend, many studies are actively conducting research on detecting and recognizing human activities using data acquired from smartphone sensors without separate attachments. Human activity recognition technology is gaining attention not only in specific fields such as security facilities and hospitals but also in everyday life and entertainment. In previous studies, researchers manually extracted effective features for activity recognition from raw signals acquired by sensors or utilized artificial neural networks to automatically extract features. However, no method showed significantly superior recognition performance compared to others. In this study, a hybrid CNN model that uses both handcrafted features and automatically extracted features using CNN is proposed. Experimental results on the UCI-HAR dataset representing six types of activities showed an impressive accuracy of 97.33%. It shows that the proposed approach is effective in recognizing human activity.
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