Table 10 Sensitivity analysis of DAC-GAN.
CNN Models | Accuracy with DAC-GAN Synthetic Nuts Images | ||||
|---|---|---|---|---|---|
Applying Raw Nuts images | Applying Sobel Nuts images | Applying Canny Edge Nuts images | Applying Kernel Isolated Nuts images | Applying Corner Key point nuts images | |
DenseNet121 | 68.30 | 69.52 | 71.41 | 75.36 | 77.42 |
VGG19 | 68.38 | 71.91 | 72.68 | 76.51 | 78.65 |
Inception | 69.48 | 72.43 | 73.93 | 77.86 | 79.41 |
XCeption | 70.63 | 73.48 | 75.03 | 78.93 | 80.48 |
MobileNet | 71.75 | 75.27 | 75.49 | 79.36 | 81.72 |
ResNet-50 | 72.97 | 76.98 | 76.63 | 81.01 | 82.86 |
EfficientNet-B0 | 74.89 | 78.66 | 80.38 | 83.78 | 85.69 |
EfficientNet-B4 | 76.21 | 80.25 | 82.05 | 85.31 | 87.69 |
ConvNeXt | 77.45 | 81.46 | 83.26 | 86.37 | 88.91 |
ViT CNN | 78.73 | 82.41 | 84.09 | 87.22 | 89.48 |
SwinT | 79.92 | 83.49 | 85.23 | 88.10 | 90.20 |
WGAN | 81.88 | 85.65 | 86.22 | 87.22 | 93.78 |
CGAN | 82.46 | 84.82 | 87.66 | 87.89 | 94.81 |
DAC-GAN | 80.28 | 83.73 | 86.82 | 88.87 | 99.86 |