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Activity Recognition Based on an Accelerometer in a Smartphone Using an FFT-Based New Feature and Fusion Methods

机译:使用基于FFT的新功能和融合方法,基于智能手机加速度计的活动识别

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With the development of personal electronic equipment, the use of a smartphone with a tri-axial accelerometer to detect human physical activity is becoming popular. In this paper, we propose a new feature based on FFT for activity recognition from tri-axial acceleration signals. To improve the classification performance, two fusion methods, minimal distance optimization (MDO) and variance contribution ranking (VCR), are proposed. The new proposed feature achieves a recognition rate of 92.41%, which outperforms six traditional time- or frequency-domain features. Furthermore, the proposed fusion methods effectively improve the recognition rates. In particular, the average accuracy based on class fusion VCR (CFVCR) is 97.01%, which results in an improvement in accuracy of 4.14% compared with the results without any fusion. Experiments confirm the effectiveness of the new proposed feature and fusion methods.
机译:随着个人电子设备的发展,使用具有三轴加速度计的智能手机来检测人类体力活动正在变得流行。在本文中,我们提出了一种基于FFT的新功能,用于从三轴加速信号识别的活动识别。为了提高分类性能,提出了两个融合方法,最小距离优化(MDO)和方差贡献排名(VCR)。新的拟议功能达到92.41%的识别率,这优于六种传统的时间或频域特征。此外,所提出的融合方法有效提高识别率。特别地,基于类融合VCR(CFVCR)的平均精度为97.01%,与没有任何融合的结果相比,精度为4.14%的准确性。实验证实了新的提出特征和融合方法的有效性。

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