2023
DOI: 10.58190/ijamec.2023.44
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A deep learning approach for human gait recognition from time-frequency analysis images of inertial measurement unit signal

Hacer Kuduz,
Fırat Kaçar

Abstract: Biomechanical analysis using deep learning has been increasingly used in recent studies to identify human activity. Wearable sensor data from inertial measurement units (IMUs) is widely used for recognizing human activity, but has several drawbacks owing to its high volume and diversity. To overcome these issues, the time-domain and power spectral characteristics of IMU data can be extracted using digital signal processing (DSP) methods. Our research aimed to investigate time-frequency analysis (TFA) methods f… Show more

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