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Research on Deep Learning-based Image Processing and Classification Techniques for Complex Networks

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17 mar 2025

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Figure 1.

The flow chart of image texture feature extraction algorithm
The flow chart of image texture feature extraction algorithm

Figure 2.

Structure of decanet network model
Structure of decanet network model

Figure 3.

Dsa_aspp module
Dsa_aspp module

Figure 4.

Linear interpolation
Linear interpolation

Figure 5.

Network parameter statistics profile
Network parameter statistics profile

Figure 6.

Network parameter statistics profile
Network parameter statistics profile

Figure 7.

Training loss and test accuracy curve
Training loss and test accuracy curve

Comparison Experimen results on the Cityscapes dataset

Model γ Backbone MIoU-val(%) MIoU-test(%) Fps
ENet 0.4 - - 56 74.5
ICNet 0.9 PSPNet50 66.4 63.8 25.9
BiSeNetV1 0.65 Xception-39 67.9 67.1 106.9
BiSeNetV1-L 0.65 ResNet-18 71.6 69 64.7
BiSeNetV2 0.4 - 71.8 70.4 144.1
BiSeNetV2-L 0.4 - 72.7 70.3 43.4
BiSeNetV3-1 0.4 STDC1 69.6 67.9 243.8
BiSeNetV3-2 0.4 STDC2 71.4 70.3 167.3
PreactResNet1 0.4 STDC1 71.1 69.6 255.8
PreactResNet2 0.4 STDC2 74.7 73.6 184.3

Comparison results of model performance

Model Underlying network 1-Stage Stanford Dogs (%) CUB-200-2011 (%)
ResNet50 ResNet50 88.7 85.7
GP-256 VGG16 × 89.1 87
MaxEnt DenseNet161 89.6 87.8
DFL-CNN ResNet50 93.7 88.6
NTS-Net ResNet50 94.2 88.7
Cross-X ResNet50 × 94.9 88.9
CIN ResNet101 93.6 89.3
ACNet ResNet50 93.4 89.3
S3N ResNet50 93.1 89.7
FDL ResNet161 90.9 90.3
PMG ResNet50 3.5 90.8
FBSD ResNet161 94.1 91
API-Net ResNet161 96.3 91.2
StackedLSTM GoogleNet 3.5 91.6
CAL ResNet101 94.7 91.8
HDML GoogleNet 95.3 92.4
DCML ResNet50 95.9 92.8
ViT ViT-B_16 15.8 91.6
TransFG ViT-B_16 96.4 92.6
FFVT ViT-B_16 96.4 92.6
RAMS-Trans ViT-B_16 96.7 92.7
AFTrans ViT-B_16 6.6 92.8
PreactResNet ViT-B_16 97 93

Comparison Experimen results on the CamVid dataset

Model Backbone Resolution MIoU(%) Fps
ENet - 940×710 48 55
ICNet PSPNet50 940×710 65.8 27.1
BiSeNetV1 Xception-39 940×710 62.1 177.1
BiSeNetV1-L ResNet-18 940×710 66.8 113.9
BiSeNetV2 - 940×710 70.5 122.7
BiSeNetV2-L - 940×710 70.8 41.9
BiSeNetV3-1 STDC1 940×710 70.6 196
BiSeNetV3-2 STDC2 940×710 71.2 153.4
PreactResNet STDC1 940×710 69.6 221.5
PreactResNet STDC2 940×710 75.4 143.2
Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne