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. 2020 Nov 4;8(1):38. doi: 10.1007/s13755-020-00131-7

Table 2.

Classification accuracy (%) of our method and recent existing state-of-the-art methods

Methods Accuracy (%)
DCNN+SVM, 2017 [1] 77.8
Pre-trained VGG-16, 2018 [2] 83.0
Ensemble of three DCNNs, 2018 [2] 87.0
Kwok et al., 2018 [19] 87.0
Makarchuk et al., 2018 [24] 90.0
EMS-Net, 2019 [38] 91.7
Our hybrid features + SVM 92.2
Our hybrid features + MLP 85.2
Our hybrid features + RF 80.2
Our hybrid features + XGBoost 82.7

Bold value indicates the best accuracy