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. 2017 Jun 6;17(6):1297. doi: 10.3390/s17061297

Table 6.

Comparison of recognition accuracy among the previous method, various CNN nets, and the proposed method.

Method Name Input Image Features (or Values) Used for Recognition EER (%)
Good-Quality Database Mid-Quality Database Low-Quality Database
Previous method [12] Original image - 0.474 2.393 8.096
A (VGG Face (no fine-tuning)) Fc7 1.536 5.177 7.264
A-1 (VGG Face (fine-tuning)) Fc7 0.858 3.214 7.044
B (VGG Net-16 (no fine-tuning)) Fc7 1.481 4.928 7.278
B-1 (VGG Net-16 (fine-tuning)) Fc7 0.804 2.967 6.115
C (VGG Net-19 (no fine-tuning)) Fc7 4.001 8.216 6.692
C-1 (VGG Net-19 (fine-tuning)) Fc7 1.061 6.172 6.443
D (Revised Alexnet-1 (whole training)) Difference image Fc8 0.901 8.436 8.727
E (Revised Alexnet-2 (whole training)) Fc8 0.763 4.767 6.540
F (VGG Net-16 (fine-tuning) (proposed method)) Fc8 0.396 1.275 3.906