Netinfo Security ›› 2026, Vol. 26 ›› Issue (4): 642-653.doi: 10.3969/j.issn.1671-1122.2026.04.011
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YUAN Xiaogang(
), PEI Huan, AN Dezhi, WAN Jianxin
Received:2026-01-07
Online:2026-04-10
Published:2026-04-29
CLC Number:
YUAN Xiaogang, PEI Huan, AN Dezhi, WAN Jianxin. Research on Deepfake Image Detection Based on Multi-Feature Perception and Attention Mechanism[J]. Netinfo Security, 2026, 26(4): 642-653.
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URL: http://netinfo-security.org/EN/10.3969/j.issn.1671-1122.2026.04.011
| 模型 | 分类器 | 同类测试 | 跨类测试 | 全类测试 | |||
|---|---|---|---|---|---|---|---|
| ACC | AP | ACC | AP | ACC | AP | ||
| 基于像素方法 | ResNet-50 | 72.4% | 68.7% | 61.9% | 58.6% | 64.5% | 61.1% |
| 文献[ | ResNet-50 | 50.5% | 66.6% | 50.0% | 58.3% | 50.2% | 60.4% |
| 文献[ | ResNet-50 | 93.3% | 89.7% | 73.5% | 68.1% | 78.4% | 73.5% |
| 文献[ | SVM(rbf) | 88.3% | 83.0% | 62.0% | 59.2% | 68.5% | 65.1% |
| 文献[ | SVM(poly) | 88.8% | 83.9% | 62.0% | 59.1% | 68.7% | 65.3% |
| 文献[ | SVM(linear) | 81.1% | 74.1% | 60.2% | 57.0% | 65.4% | 61.3% |
| 文献[ | Linear Reg. | 79.9% | 73.2% | 60.5% | 57.0% | 65.3% | 61.1% |
| 文献[ | ResNet-50 | 94.8% | 93.5% | 73.4% | 69.0% | 78.7% | 75.2% |
| 文献[ | Attention | 95.0% | 94.1% | 77.0% | 68.3% | 80.0% | 79.0% |
| 本文模型 | Attention | 98.5% | 99.1% | 81.9% | 98.6% | 92.6% | 98.7% |
| 模型 | IDDPM | ADM | DDPM | Midjourney | DALLE | Mean | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ACC | AP | ACC | AP | ACC | AP | ACC | AP | ACC | AP | ACC | AP | |
| 文献[ | 48.3% | 52.6% | 53.4% | 64.4% | 50.0% | 63.3% | 48.6% | 38.5% | 49.3% | 44.7% | 49.9% | 52.7% |
| 文献[ | 70.5% | 85.7% | 67.3% | 72.2% | 47.6% | 43.1% | 39.7% | 40.8% | 68.7% | 65.2% | 58.8% | 61.4% |
| 文献[ | 63.2% | 71.7% | 39.1% | 40.8% | 54.1% | 53.6% | 45.7% | 47.2% | 53.9% | 52.2% | 51.2% | 53.1% |
| 文献[ | 63.5% | 62.5% | 57.1% | 60.1% | 55.3% | 57.7% | 54.3% | 56.4% | 48.8% | 47.4% | 55.8% | 56.8% |
| 文献[ | 47.9% | 57.0% | 51.0% | 56.1% | 47.3% | 45.5% | 50.0% | 44.7% | 49.8% | 49.7% | 49.2% | 50.6% |
| 文献[ | 45.2% | 46.9% | 72.7% | 79.3% | 59.8% | 88.5% | 68.3% | 76.0% | 75.1% | 80.9% | 64.2% | 74.3% |
| 本文模型 | 68.6% | 74.6% | 70.8% | 82.7% | 58.2% | 81.0% | 74.5% | 69.0% | 68.9% | 77.2% | 68.2% | 76.9% |
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