Table 6.
The CNN architectures used in the experiment.
Layer | CNN1 | CNN2 | CNN3 | CNN4 | Alexnet | VGGNet-9 | |
---|---|---|---|---|---|---|---|
Input | 1 × 2071 | 1 × 2071 | 1 × 2071 | 1 × 2071 | 1 × 2071 | 1 × 2071 | |
Convolution | 1 | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 96 kernels in size 1 × 11 with max pooling | 64 kernels in size 1 × 5 |
2 | — | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 256 kernels in size 1 × 5 with max pooling | 64 kernels in size 1 × 3 with max pooling | |
3 | — | — | 32 kernels in size 1 × 3 with max pooling | 32 kernels in size 1 × 3 with max pooling | 384 kernels in size 1 × 3 with max pooling | 128 kernels in size 1× 3 | |
4 | — | — | — | 32 kernels in size 1 × 3 with max pooling | 384 kernels in size 1 × 3 | 128 kernels in size 1 × 3 with max pooling | |
5 | — | — | — | — | 256 kernels in size 1 × 3 | 256 kernels in size 1 × 3 | |
6 | — | — | — | — | — | 256 kernels in size 1 × 3 | |
7 | — | — | — | — | — | 256 kernels in size 1 × 3 with max pooling | |
Fully connected | 1 | 512 nodes, ReLu | 512 nodes, ReLu | 512 nodes, ReLu | 512 nodes, ReLu | 4096 nodes, ReLu | 4096 nodes, ReLu |
2 | 32 nodes, ReLu | 32 nodes, ReLu | 32 nodes, ReLu | 32 nodes, ReLu | 4096 nodes, ReLu | 4096 nodes, ReLu | |
Output | 1 node | 1 node | 1 node | 1 node | 1 node | 1 node |