
Journal of Systems Engineering and Electronics ›› 2026, Vol. 37 ›› Issue (3): 767-778.doi: 10.23919/JSEE.2026.000066
• CROSS-DOMAIN ELECTROMAGNETIC PERCEPTION AND COMMUNICATION & NETWORKING TECHNOLOGY (PART I) • Previous Articles Next Articles
Yongsheng DUAN(
), Junning ZHANG(
), Lei XUE(
), Ying XU(
)
Received:2025-12-25
Accepted:2026-03-22
Online:2026-06-18
Published:2026-06-29
Contact:
Junning ZHANG
E-mail:406810103@qq.com;zjn20101796@sina.cn;eeixuelei@163.com;eeixuying@163.com
Supported by:Yongsheng DUAN, Junning ZHANG, Lei XUE, Ying XU. RF-IRSynNet: cross-modal radio frequency-infrared fusion for robust UAV recognition[J]. Journal of Systems Engineering and Electronics, 2026, 37(3): 767-778.
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Table 1
Detection accuracy of different methods under various conditions"
| Algorithm | Modality | Distance/m | Train: Test Split/% | |||
| 50:50 | 60:40 | 70:30 | 80:20 | |||
| Faster R-CNN [ | Visual | 50 200 | 89.9 47.5 | 90.2 63.8 | 91.7 69.1 | 92.5 71.3 |
| YOLOv11 [ | Visual | 50 200 | 89.3 62.6 | 91.8 66.7 | 93.3 73.3 | 94.5 79.5 |
| RT-DETR [ | Visual | 50 200 | 88.9 60.4 | 86.1 68.5 | 92.7 74.8 | 95.3 81.7 |
| PSD+SVM [ | RF | 50 200 | 55.7 51.6 | 56.1 52.4 | 58.5 53.7 | 59.7 55.2 |
| ResNet50 [ | RF | 50 200 | 61.6 58.9 | 67.8 61.1 | 73.9 72.8 | 76.0 75.4 |
| RF-ESN | RF | 50 200 | 81.1 79.3 | 83.6 81.9 | 86.9 84.8 | 89.5 88.5 |
| 2DCNN+1DCNN [ | Visual+RF | 50 200 | 84.5 49.5 | 86.3 55.0 | 88.3 58.3 | 92.7 64.1 |
| Proposed method | Visual+RF | 50 200 | 92.6±1.3 90.4±1.6 | 93.8±1.1 92.0±1.3 | 96.7±0.8 93.6±1.0 | 98.0±0.5 94.5±0.9 |
| p-value (Proposed method vs. RT-DETR) | 50 | 3.15e-3 | 5.33e-4 | 1.72e-3 | 5.32e-3 | |
| p-value (Proposed method vs. RF-ESN) | 200 | 6.64e-6 | 1.51e-5 | 3.97e-5 | 1.19e-4 | |
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