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. 2021 Nov 17;21(22):7628. doi: 10.3390/s21227628

Table 3.

Improvements in this study compared to previous studies.

Study Badura’s Study Kim’s Study This Study
Classification model Multi-layer perceptron (MLP) Support vector Machine (SVM) Double head 1D-CNN and single head GRU stacking ensemble
Feature extraction Manual (Frequency and time domain feature, Feature selection: Fisher’s linear discriminant) Manual (Frequency domain and energy feature, Feature selection: KPCA) Automatic in deep learning
Sampling rate of data (Hz) 100 100 20 (Introduce data down-sampling)
Data imbalance problem Yes Yes No (Introduce data augmentation)
Amount of experimental data 63 53 78
Evaluation method Random split Training: Test = 7:3 Random split Training: Test = 7:3 Mean accuracy of 10-fold cross validation