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. 2022 Jan 18;55(6):4755–4808. doi: 10.1007/s10462-021-10116-x

Table 5.

RFID-based HAR models

C1 C2 C3 C4 C5 C6 C7 C8
# features/ Feature extraction ML/DL model Architecture Metrics Validation Hyper-parameters/Optimizer Loss Function CIT*
R1 84 features for F-statistics, Relief-F, Fisher Hand-crafted Canonical Correlation Analysis (CCA) Divide RSSI stream into segments, CCA for extracting features by computing canonical correlation for each feature pair, activity specific dictionary is formed: Sparse coding and dictionary is updated sequentially using K-SVD F1-score One sub out validation strategy _ Yao et al. (2018)
R2 Frequency Automatic LSTM I/p layer, two hidden layers and o/p layer Precision, accuracy _ Timestep, neuron in hidden layers/Adam/Cross entropy Du et al. (2019)
R3 Frequency Hand-crafted Multi variate Gaussian Approach ADL activity data gathering, score each activity with gaussian pdf, Human Activity Recognition Based on Maximum likelihood Estimation, Activity classification Accuracy, precision, recall, F1-score, root mean square error (RMSE) _ _ Oguntala et al. (2019)

*CIT citations, DTW dynamic time wraping, DO dropout, LR learning rate, SVM support vector machine, LSTM long short-term memory