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Research on Traditional Costume Culture Information Extraction and Digital Reconstruction Methods Based on Artificial Intelligence

  
24 mar 2025

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Figure 1.

The training curve and the validation curve of the RSKP-UNet model
The training curve and the validation curve of the RSKP-UNet model

Figure 2.

Model training loss curve of different learning rate
Model training loss curve of different learning rate

Figure 3.

Model training loss curve of different batch size
Model training loss curve of different batch size

Figure 4.

Evaluation score of different professional respondents
Evaluation score of different professional respondents

Information extraction results of the UNet model

Site AP Precision F1 value Recall
Arm 72.76% 78.29% 77.84% 75.99%
Foot 62.34% 70.27% 70.22% 70.46%
Forebreast 78.47% 77.35% 83.96% 81.31%
Head 92.46% 90.14% 90.39% 91.58%
Leg 68.17% 63.09% 70.92% 73.87%
Waist 70.17% 67.58% 65.33% 72.49%

Similarity of different element images

Pattern elements of clothing SS MSE MSRE PSNR
Elephant, pagoda 0.689 0.775 0.851 18.693
Elephant, human 0.684 0.769 0.859 17.857
Peacock 0.779 0.925 0.946 20.672
Human, horse 0.725 0.828 0.919 18.683
Architecture 0.846 0.781 0.861 17.657
Average 0.745 0.816 0.887 18.712

Information extraction results of the RSKP-UNet model

Site AP Precision F1 value Recall
Arm 81.88% 81.05% 78.74% 80.67%
Foot 73.42% 74.05% 75.52% 72.55%
Forebreast 84.47% 86.74% 85.04% 85.88%
Head 95.62% 93.29% 92.71% 94.33%
Leg 71.54% 68.94% 72.17% 75.24%
Waist 74.23% 73.03% 70.18% 79.74%
Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne