Fig. 1. A confusion matrix and their meaning.
Fig. 2. Comparison of diagonal elements of confusion matrix from LeNet-type and MiniVGGNet-type models for different sizes of input images.
Fig. 3. Normalized diagonal values from confusion matrices by ensemble models for input images of 64 ×64 × 3.
Fig. 4. Normalized diagonal values from confusion matrices by ensemble models for input images of 128 ×128 × 3.
Fig. 5. Confusion matrices and F1 scores of several ensemble models by the averaging method.
Table 1. Class name and its designated index for species and surface combination
Table 2. The architecture of LeNet models.
Table 3. The architecture of MiniVGGNet models.
Table 4. The best results by SNR-like measure from ensemble sets for input image of 64 × 64 × 3.
Table 5. The best results by SNR-like measure from ensemble sets for input image of 128 × 128 × 3.
Table 6. Performance measures of LeNet2-LeNet3-MiniVGGNet4 ensemble model by the averaging method.
Table 7. Performance measures (F1 scores) of the best ensemble model (LeNet2, LeNet3, and MiniVGGNet4) by the averaging method and individual CNN models (LeNet3 and MiniVGGNet3).
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