Abstract
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. Copyright © 2014 The Institute of Electronics, Information and Communication Engineers.
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CITATION STYLE
Xue, Y., Hu, Y., & Jin, L. (2014). Activity recognition based on an accelerometer in a smartphone using an FFT-based new feature and fusion methods. IEICE Transactions on Information and Systems, E97-D(8), 2182–2186. https://doi.org/10.1587/transinf.E97.D.2182
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