Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (5): 1586-1595.DOI: 10.11772/j.issn.1001-9081.2025050565
• Multimedia computing and computer simulation • Previous Articles
Minqi WU1, Yuanhua YANG1(
), Hang LI1, Yaqin HU2, Zhihao TANG1, Teng MEI1
Received:2025-05-26
Revised:2025-10-13
Accepted:2025-10-20
Online:2025-10-29
Published:2026-05-10
Contact:
Yuanhua YANG
About author:WU Minqi, born in 1999, M. S. candidate. His research interests include computer vision, object detection, graph neural networks.Supported by:
吴闵奇1, 杨元华1(
), 李航1, 胡雅琴2, 汤智豪1, 梅腾1
通讯作者:
杨元华
作者简介:吴闵奇(1999—),男,湖北武汉人,硕士研究生,CCF会员,主要研究方向:计算机视觉、目标检测、图神经网络;基金资助:CLC Number:
Minqi WU, Yuanhua YANG, Hang LI, Yaqin HU, Zhihao TANG, Teng MEI. Lightweight underwater small object detection based on graph Transformer and RT-DETR[J]. Journal of Computer Applications, 2026, 46(5): 1586-1595.
吴闵奇, 杨元华, 李航, 胡雅琴, 汤智豪, 梅腾. 基于图Transformer和RT-DETR的轻量化水下小目标检测[J]. 《计算机应用》唯一官方网站, 2026, 46(5): 1586-1595.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2025050565
| 模型 | Params/106 | GFLOPs | AP/% | mAP/% | AP@0.5/% | Latency/ms | |||
|---|---|---|---|---|---|---|---|---|---|
| C1 | C2 | C3 | C4 | ||||||
| YOLO11-S[ | 9.4 | 21.5 | 77.5 | 72.8 | 86.2 | 91.6 | 48.7 | 82.0 | 9.4 |
| YOLO11-M[ | 20.1 | 68.0 | 80.5 | 76.6 | 87.4 | 91.7 | 50.7 | 84.1 | 13.3 |
| RT-DETR-S[ | 20.0 | 59.6 | 81.9 | 77.1 | 86.6 | 88.4 | 49.4 | 83.5 | 10.9 |
| RT-DETR-M[ | 42.7 | 130.5 | 83.0 | 81.3 | 87.6 | 90.5 | 50.0 | 85.6 | 16.4 |
| Mask R-CNN[ | 44.2 | 260.1 | 78.8 | 73.3 | 70.1 | 83.6 | 38.7 | 76.5 | 58.4 |
| G-Net[ | 78.7 | 33.4 | 87.0 | 59.6 | 74.0 | 81.1 | — | 75.4 | 7.1 |
| YOLOv8-MU[ | 5.7 | 28.7 | 78.5 | 71.0 | 84.5 | 89.4 | — | 80.9 | — |
| YOLOv5g-lite[ | 5.7 | 19.7 | 69.9 | 91.4 | 64.6 | 84.1 | — | 77.5 | 20.7 |
| AMSP-UOD[ | 25.0 | 68.0 | 67.3 | 87.5 | 60.6 | 77.5 | 40.1 | 78.5 | 17.8 |
| RFTM-50[ | 75.5 | 195.0 | — | — | — | — | 48.2 | 80.7 | 112.3 |
| YOLOv8-LA[ | 2.3 | 6.1 | 91.5 | 82.1 | 87.1 | 85.9 | — | 84.2 | 4.9 |
| YOLOv8-DGF[ | 6.0 | — | 75.9 | 92.5 | 83.4 | 87.5 | — | 84.8 | 7.1 |
| YOLOX-Nano[ | 0.9 | 1.1 | 61.5 | 58.0 | 67.5 | 71.1 | 30.5 | 64.5 | 3.0 |
| NanoDet-m[ | 1.0 | 1.2 | 59.5 | 55.7 | 65.2 | 68.8 | 28.2 | 62.3 | 2.7 |
| YOLOv7-tiny[ | 6.2 | 5.8 | 68.6 | 65.1 | 74.6 | 78.2 | 39.9 | 71.6 | 6.2 |
| Graph-DETR | 14.1 | 28.4 | 83.9 | 81.7 | 89.0 | 92.7 | 53.2 | 86.8 | 9.6 |
Tab. 1 Performance comparison of Graph-DETR and other methods on URPC2020 test set
| 模型 | Params/106 | GFLOPs | AP/% | mAP/% | AP@0.5/% | Latency/ms | |||
|---|---|---|---|---|---|---|---|---|---|
| C1 | C2 | C3 | C4 | ||||||
| YOLO11-S[ | 9.4 | 21.5 | 77.5 | 72.8 | 86.2 | 91.6 | 48.7 | 82.0 | 9.4 |
| YOLO11-M[ | 20.1 | 68.0 | 80.5 | 76.6 | 87.4 | 91.7 | 50.7 | 84.1 | 13.3 |
| RT-DETR-S[ | 20.0 | 59.6 | 81.9 | 77.1 | 86.6 | 88.4 | 49.4 | 83.5 | 10.9 |
| RT-DETR-M[ | 42.7 | 130.5 | 83.0 | 81.3 | 87.6 | 90.5 | 50.0 | 85.6 | 16.4 |
| Mask R-CNN[ | 44.2 | 260.1 | 78.8 | 73.3 | 70.1 | 83.6 | 38.7 | 76.5 | 58.4 |
| G-Net[ | 78.7 | 33.4 | 87.0 | 59.6 | 74.0 | 81.1 | — | 75.4 | 7.1 |
| YOLOv8-MU[ | 5.7 | 28.7 | 78.5 | 71.0 | 84.5 | 89.4 | — | 80.9 | — |
| YOLOv5g-lite[ | 5.7 | 19.7 | 69.9 | 91.4 | 64.6 | 84.1 | — | 77.5 | 20.7 |
| AMSP-UOD[ | 25.0 | 68.0 | 67.3 | 87.5 | 60.6 | 77.5 | 40.1 | 78.5 | 17.8 |
| RFTM-50[ | 75.5 | 195.0 | — | — | — | — | 48.2 | 80.7 | 112.3 |
| YOLOv8-LA[ | 2.3 | 6.1 | 91.5 | 82.1 | 87.1 | 85.9 | — | 84.2 | 4.9 |
| YOLOv8-DGF[ | 6.0 | — | 75.9 | 92.5 | 83.4 | 87.5 | — | 84.8 | 7.1 |
| YOLOX-Nano[ | 0.9 | 1.1 | 61.5 | 58.0 | 67.5 | 71.1 | 30.5 | 64.5 | 3.0 |
| NanoDet-m[ | 1.0 | 1.2 | 59.5 | 55.7 | 65.2 | 68.8 | 28.2 | 62.3 | 2.7 |
| YOLOv7-tiny[ | 6.2 | 5.8 | 68.6 | 65.1 | 74.6 | 78.2 | 39.9 | 71.6 | 6.2 |
| Graph-DETR | 14.1 | 28.4 | 83.9 | 81.7 | 89.0 | 92.7 | 53.2 | 86.8 | 9.6 |
| 模型 | Params/106 | GFLOPs | AP/% | mAP/% | AP@0.5/% | Latency/ms | |||
|---|---|---|---|---|---|---|---|---|---|
| C1 | C2 | C3 | C4 | ||||||
| YOLO11-S[ | 9.4 | 21.5 | 73.6 | 91.1 | 80.6 | 88.1 | 49.6 | 83.3 | 10.7 |
| YOLO11-M[ | 20.1 | 68.0 | 74.1 | 91.4 | 80.1 | 89.4 | 50.4 | 83.7 | 14.5 |
| RT-DETR-S[ | 20.0 | 59.6 | 78.4 | 90.7 | 81.0 | 88.1 | 50.7 | 84.5 | 11.3 |
| RT-DETR-M[ | 42.7 | 130.5 | 79.4 | 91.6 | 82.5 | 89.9 | 51.4 | 85.8 | 17.0 |
| Mask R-CNN[ | 44.2 | 260.1 | 53.8 | 80.2 | 71.0 | 81.8 | 38.9 | 71.7 | 58.4 |
| YOLOv8-LA[ | 2.4 | 7.5 | 81.7 | 91.0 | 80.7 | 89.7 | 50.2 | 84.7 | 5.3 |
| YOLOv7-GR[ | — | — | 81.7 | 91.0 | 80.7 | 89.7 | 50.8 | 85.8 | 26.3 |
| YOLOv7-RC[ | 18.2 | 69.4 | 76.9 | 91.8 | 83.0 | 89.0 | — | 85.2 | 10.4 |
| YOLOv5s+SAGHS[ | 7.0 | — | 79.0 | 91.8 | 82.3 | 89.3 | 41.7 | 75.3 | 8.0 |
| YOLOV5s+CBAM[ | 7.0 | — | 82.7 | 93.4 | 82.3 | 91.0 | 45.1 | 79.2 | 11.0 |
| YOLOX-Nano[ | 0.9 | 1.1 | 62.8 | 70.9 | 56.3 | 67.3 | 31.9 | 64.3 | 3.7 |
| NanoDet-m[ | 1.0 | 1.2 | 56.0 | 70.3 | 62.2 | 66.7 | 29.6 | 63.8 | 3.1 |
| YOLOv7-tiny[ | 6.2 | 5.8 | 65.6 | 80.5 | 72.1 | 76.6 | 41.8 | 73.7 | 7.8 |
| Graph-DETR | 14.1 | 28.4 | 83.1 | 92.5 | 84.0 | 91.0 | 54.1 | 87.6 | 10.5 |
Tab. 2 Performance comparison of Graph-DETR and other methods on URPC2021 test set
| 模型 | Params/106 | GFLOPs | AP/% | mAP/% | AP@0.5/% | Latency/ms | |||
|---|---|---|---|---|---|---|---|---|---|
| C1 | C2 | C3 | C4 | ||||||
| YOLO11-S[ | 9.4 | 21.5 | 73.6 | 91.1 | 80.6 | 88.1 | 49.6 | 83.3 | 10.7 |
| YOLO11-M[ | 20.1 | 68.0 | 74.1 | 91.4 | 80.1 | 89.4 | 50.4 | 83.7 | 14.5 |
| RT-DETR-S[ | 20.0 | 59.6 | 78.4 | 90.7 | 81.0 | 88.1 | 50.7 | 84.5 | 11.3 |
| RT-DETR-M[ | 42.7 | 130.5 | 79.4 | 91.6 | 82.5 | 89.9 | 51.4 | 85.8 | 17.0 |
| Mask R-CNN[ | 44.2 | 260.1 | 53.8 | 80.2 | 71.0 | 81.8 | 38.9 | 71.7 | 58.4 |
| YOLOv8-LA[ | 2.4 | 7.5 | 81.7 | 91.0 | 80.7 | 89.7 | 50.2 | 84.7 | 5.3 |
| YOLOv7-GR[ | — | — | 81.7 | 91.0 | 80.7 | 89.7 | 50.8 | 85.8 | 26.3 |
| YOLOv7-RC[ | 18.2 | 69.4 | 76.9 | 91.8 | 83.0 | 89.0 | — | 85.2 | 10.4 |
| YOLOv5s+SAGHS[ | 7.0 | — | 79.0 | 91.8 | 82.3 | 89.3 | 41.7 | 75.3 | 8.0 |
| YOLOV5s+CBAM[ | 7.0 | — | 82.7 | 93.4 | 82.3 | 91.0 | 45.1 | 79.2 | 11.0 |
| YOLOX-Nano[ | 0.9 | 1.1 | 62.8 | 70.9 | 56.3 | 67.3 | 31.9 | 64.3 | 3.7 |
| NanoDet-m[ | 1.0 | 1.2 | 56.0 | 70.3 | 62.2 | 66.7 | 29.6 | 63.8 | 3.1 |
| YOLOv7-tiny[ | 6.2 | 5.8 | 65.6 | 80.5 | 72.1 | 76.6 | 41.8 | 73.7 | 7.8 |
| Graph-DETR | 14.1 | 28.4 | 83.1 | 92.5 | 84.0 | 91.0 | 54.1 | 87.6 | 10.5 |
| Backbone | Params/106 | GFLOPs | LSKAttention | CM block | GTFPN | Pruning | WTConv | Adown | mAP/% | AP@0.5/% |
|---|---|---|---|---|---|---|---|---|---|---|
| ResNet50 | 42.7 | 130.5 | 51.4 | 85.8 | ||||||
| 46.8 | 136.2 | ✓ | 53.0 | 87.4 | ||||||
| MobileNetV4 | 11.0 | 25.8 | 45.4 | 80.3 | ||||||
| 10.1 | 21.2 | ✓ | 46.7 | 82.0 | ||||||
| 10.1 | 20.9 | ✓ | 46.3 | 81.1 | ||||||
| 14.2 | 30.9 | ✓ | 50.1 | 84.7 | ||||||
| 9.9 | 21.3 | ✓ | 46.0 | 82.5 | ||||||
| 12.3 | 27.5 | ✓ | 45.3 | 81.4 | ||||||
| 10.3 | 21.1 | ✓ | ✓ | 47.3 | 84.1 | |||||
| 12.0 | 26.3 | ✓ | ✓ | ✓ | ✓ | 48.2 | 85.3 | |||
| 13.7 | 27.2 | ✓ | ✓ | ✓ | ✓ | ✓ | 53.9 | 86.9 | ||
| 14.1 | 28.4 | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | 54.1 | 87.6 |
Tab. 3 Ablation experimental results on URPC2021 dataset
| Backbone | Params/106 | GFLOPs | LSKAttention | CM block | GTFPN | Pruning | WTConv | Adown | mAP/% | AP@0.5/% |
|---|---|---|---|---|---|---|---|---|---|---|
| ResNet50 | 42.7 | 130.5 | 51.4 | 85.8 | ||||||
| 46.8 | 136.2 | ✓ | 53.0 | 87.4 | ||||||
| MobileNetV4 | 11.0 | 25.8 | 45.4 | 80.3 | ||||||
| 10.1 | 21.2 | ✓ | 46.7 | 82.0 | ||||||
| 10.1 | 20.9 | ✓ | 46.3 | 81.1 | ||||||
| 14.2 | 30.9 | ✓ | 50.1 | 84.7 | ||||||
| 9.9 | 21.3 | ✓ | 46.0 | 82.5 | ||||||
| 12.3 | 27.5 | ✓ | 45.3 | 81.4 | ||||||
| 10.3 | 21.1 | ✓ | ✓ | 47.3 | 84.1 | |||||
| 12.0 | 26.3 | ✓ | ✓ | ✓ | ✓ | 48.2 | 85.3 | |||
| 13.7 | 27.2 | ✓ | ✓ | ✓ | ✓ | ✓ | 53.9 | 86.9 | ||
| 14.1 | 28.4 | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | 54.1 | 87.6 |
| 图卷积算子 | Params/106 | GFLOPs | mAP/% | AP@0.5/% |
|---|---|---|---|---|
| EdgeConv | 14.3 | 29.6 | 54.3 | 86.0 |
| GIN | 14.0 | 28.4 | 53.7 | 85.5 |
| GAT | 16.7 | 30.9 | 54.2 | 86.9 |
| GraphSAGE | 14.4 | 28.7 | 54.1 | 87.1 |
| Max-Relative | 14.1 | 28.4 | 54.3 | 87.6 |
Tab. 4 Ablation test results of different graph convolution operators
| 图卷积算子 | Params/106 | GFLOPs | mAP/% | AP@0.5/% |
|---|---|---|---|---|
| EdgeConv | 14.3 | 29.6 | 54.3 | 86.0 |
| GIN | 14.0 | 28.4 | 53.7 | 85.5 |
| GAT | 16.7 | 30.9 | 54.2 | 86.9 |
| GraphSAGE | 14.4 | 28.7 | 54.1 | 87.1 |
| Max-Relative | 14.1 | 28.4 | 54.3 | 87.6 |
| 量化策略 | 量化精度 | 模型大小/MB | AP@0.5 | Latency/ms |
|---|---|---|---|---|
| PyTorch | FP32 | 125.4 | 87.6 | 78.1 |
| TensorRT | FP16 | 64.8 | 87.1 | 56.5 |
| INT8 | 46.7 | 87.3 | 47.2 |
Tab. 5 Ablation test results of different quantization strategies on Jetson Orin Nano 8G platform
| 量化策略 | 量化精度 | 模型大小/MB | AP@0.5 | Latency/ms |
|---|---|---|---|---|
| PyTorch | FP32 | 125.4 | 87.6 | 78.1 |
| TensorRT | FP16 | 64.8 | 87.1 | 56.5 |
| INT8 | 46.7 | 87.3 | 47.2 |
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