Table 2.
Network Architecture | Training Data | Training Strategy | Test Accuracy |
---|---|---|---|
MVFCNN | Unbalanced SEM | from scratch | 55.50% |
MVFCNN | Unbalanced SEM | fine tune MVFCNN | 87.98% |
MVFCNN | Balanced SEM | fine tune MVFCNN | 90.97% |
MVFCNN | Balanced and augmented SEM | fine tune MVFCNN | 93.94% |
The results show that fine tuning together with data augmentation achieves the best result. However, the effect of data augmentation is not significant.