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. 2018 Feb 1;8:2128. doi: 10.1038/s41598-018-20037-5

Table 4.

Confusion Matrix of the best MVFCNN approach.

Actual Class Labels
Martensite Temp. Martensite Bainite Pearlite Class Precision
Predicted Class Labels Martensite 1190
94.97%
0
0.00%
11
3.19%
0
0.00%
99.08%
Temp. Martensite 24
1.92%
268
97.81%
0
0.00%
0
0.00%
91.78%
Bainite 39
3.11%
6
2.19%
325
94.20%
16
4.80%
84.19%
Pearlite 0
0.00%
0
0.00%
9
2.61%
317
95.20%
97.23%
Class Recall 94.97% 97.81% 94.20% 95.19% Total Accuracy 95.23%

The matrix shows the number of samples for each class predicted by the system. Due to an unbalanced multi-class problem, percentage numbers for each class show normalized recall rates. Note: #48 not-segmented objects have not been considered. Overall accuracy is 93.94%.