BDRNet: Background-Aware Dynamic-Scale Routing Network for UAV Remote Sensing Object Detection
Highlights
- UAV aerial imagery suffers from three persistent bottlenecks—complex background clutter, drastic scale variation, and gradient instability for extremely small objects—that existing lightweight detectors fail to address simultaneously.
- Standard attention mechanisms enhance foreground indiscriminately, static FPN fusion cannot adapt to content, and IoU-based losses are overly sensitive to small object offsets, collectively limiting detection accuracy in UAV scenarios.
- The consistent performance gains across two diverse UAV benchmarks validate that jointly optimizing feature suppression, multi-scale fusion, and regression objectives is a promising direction for advancing small object detection in complex remote sensing scenarios.
- The proposed approach has broad implications for remote sensing applications requiring real-time aerial perception, including urban traffic monitoring, infrastructure inspection, disaster assessment, and precision agriculture.
Abstract
1. Introduction
- We propose the BAFE module to address complex background interference in UAV aerial imagery. By modeling directional contextual information and generating a background suppression weight map, BAFE strengthens weak target responses and improves backbone feature representation.
- We design the DSRP module to improve scale-adaptive feature aggregation. By retaining the high-resolution branch and replacing static feature fusion with dynamic routing, DSRP enhances fine-detail preservation and cross-scale information interaction for small and multi-scale objects.
- We introduce SGNW loss to improve localization robustness. By incorporating an aspect-ratio-guided geometric constraint and a scale-aware dynamic fusion strategy, SGNW alleviates regression instability for extremely small objects while maintaining reliable localization for multi-scale targets.
2. Related Work
2.1. UAV Remote Sensing Object Detection
2.2. Attention Mechanism
2.3. Feature Pyramid Networks
2.4. Loss Function Optimization
3. Materials and Methods
3.1. Overview
3.2. BAFE
3.3. DSRP
3.4. SGNW Loss
4. Results
4.1. Datasets
4.2. Evaluation Metrics
4.3. Experimental Setup
4.4. Ablation Study
4.4.1. Ablation on the VisDrone2019 Dataset
4.4.2. Ablation on the UAVDT Dataset
4.4.3. Sensitivity Analysis
4.4.4. Qualitative Analysis
4.5. Comparative Experiments
4.5.1. Comparison with State-of-the-Art Detectors
4.5.2. In-Depth Analysis Against the Baseline
4.5.3. Generalization on the UAVDT Dataset
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Parameter | Configuration |
|---|---|
| CPU | Intel Core i9-14900K |
| GPU | RTX 5070 |
| Operating system | Ubuntu 20.04 LTS |
| Deep learning framework | PyTorch 2.0.6 |
| GPU accelerator | CUDA 13.0 |
| Integrated development environment | PyCharm 2025.2.2 |
| Programming language | Python 3.11 |
| Parameter | Configuration |
|---|---|
| Optimizer | SGD |
| Learning rate | 0.001 |
| LR scheduler | Cosine Annealing |
| Image size | |
| Batch size | 32 |
| Workers | 8 |
| Epochs | 200 |
| Weight decay | 0.0005 |
| Momentum | 0.937 |
| Close mosaic | Last 10 epochs |
| Model | Module | Params (M) | FLOPs (G) | P (%) | R (%) | mAP50 (%) | mAP50-95 (%) | ||
|---|---|---|---|---|---|---|---|---|---|
| BAFE | DSRP | SGNW | |||||||
| Baseline | – | – | – | 7.25 | 21.6 | 44.0 | 33.1 | 31.4 | 17.5 |
| A | √ | – | – | 7.39 | 22.3 | 45.1 | 33.6 | 32.3 | 18.2 |
| B | – | √ | – | 7.14 | 21.2 | 44.6 | 33.8 | 31.7 | 17.9 |
| C | – | – | √ | 7.25 | 21.6 | 45.2 | 34.3 | 32.3 | 18.3 |
| D | √ | √ | – | 7.27 | 21.7 | 45.3 | 34.5 | 32.8 | 18.4 |
| Ours | √ | √ | √ | 7.27 | 21.7 | 45.8 | 34.9 | 33.3 | 18.8 |
| Loss Function | P (%) | R (%) | mAP50 (%) | (%) |
|---|---|---|---|---|
| CIoU | 44.0 | 33.1 | 31.4 | 16.2 |
| EIoU | 44.4 | 33.3 | 31.5 | 16.5 |
| NWD | 44.7 | 34.0 | 31.8 | 16.8 |
| 45.2 | 34.3 | 32.3 | 17.2 |
| Model | Module | Params (M) | FLOPs (G) | P (%) | R (%) | mAP50 (%) | mAP50-95 (%) | ||
|---|---|---|---|---|---|---|---|---|---|
| BAFE | DSRP | SGNW | |||||||
| Baseline | – | – | – | 7.25 | 21.6 | 89.2 | 76.8 | 63.8 | 38.5 |
| A | √ | – | – | 7.39 | 22.3 | 90.9 | 77.7 | 64.7 | 39.5 |
| B | – | √ | – | 7.14 | 21.2 | 88.9 | 77.4 | 64.2 | 39.0 |
| C | – | – | √ | 7.25 | 21.6 | 89.5 | 77.1 | 64.6 | 39.3 |
| D | √ | √ | – | 7.27 | 21.7 | 90.2 | 78.3 | 65.2 | 40.2 |
| Ours | √ | √ | √ | 7.27 | 21.7 | 90.7 | 77.8 | 65.9 | 40.8 |
| Model | Params (M) | FLOPs (G) | FPS | Precision | Recall | mAP@0.5 | mAP@0.5:0.95 |
|---|---|---|---|---|---|---|---|
| YOLOv10s [11] | 7.3 | 21.6 | 151 | 0.44 | 0.33 | 0.314 | 0.175 |
| RT-DETR [49] | 30.0 | 136.0 | 74 | 0.50 | 0.39 | 0.345 | 0.198 |
| YOLOv5s [50] | 9.1 | 23.8 | 137 | 0.42 | 0.33 | 0.308 | 0.174 |
| YOLOv6s [51] | 16.3 | 44.0 | 74 | 0.42 | 0.31 | 0.295 | 0.169 |
| YOLOX-S [52] | 9.0 | 26.8 | 122 | 0.42 | 0.32 | 0.296 | 0.161 |
| YOLOv7-tiny [53] | 6.2 | 13.8 | 220 | 0.41 | 0.32 | 0.294 | 0.159 |
| YOLOv8s [54] | 11.1 | 28.5 | 114 | 0.44 | 0.33 | 0.313 | 0.178 |
| YOLOv9s [55] | 7.2 | 26.7 | 122 | 0.44 | 0.33 | 0.312 | 0.179 |
| YOLOv11s [56] | 9.4 | 21.3 | 153 | 0.44 | 0.33 | 0.309 | 0.176 |
| YOLO-MS-S [57] | 8.5 | 24.6 | 133 | 0.44 | 0.33 | 0.312 | 0.174 |
| Gold-YOLO-S [58] | 8.9 | 30.1 | 108 | 0.44 | 0.33 | 0.317 | 0.178 |
| SFFNet [59] | 6.3 | 24.0 | 136 | 0.47 | 0.35 | 0.326 | 0.183 |
| BDRNet (Ours) | 7.3 | 21.7 | 148 | 0.48 | 0.37 | 0.333 | 0.188 |
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Share and Cite
Zheng, X.; Shao, F.; Liu, Q.; Dai, J.; Yue, Y.; Zhang, T.; Chen, C. BDRNet: Background-Aware Dynamic-Scale Routing Network for UAV Remote Sensing Object Detection. Remote Sens. 2026, 18, 1987. https://doi.org/10.3390/rs18121987
Zheng X, Shao F, Liu Q, Dai J, Yue Y, Zhang T, Chen C. BDRNet: Background-Aware Dynamic-Scale Routing Network for UAV Remote Sensing Object Detection. Remote Sensing. 2026; 18(12):1987. https://doi.org/10.3390/rs18121987
Chicago/Turabian StyleZheng, Xuelong, Faming Shao, Qing Liu, Juying Dai, Yiming Yue, Tao Zhang, and Caian Chen. 2026. "BDRNet: Background-Aware Dynamic-Scale Routing Network for UAV Remote Sensing Object Detection" Remote Sensing 18, no. 12: 1987. https://doi.org/10.3390/rs18121987
APA StyleZheng, X., Shao, F., Liu, Q., Dai, J., Yue, Y., Zhang, T., & Chen, C. (2026). BDRNet: Background-Aware Dynamic-Scale Routing Network for UAV Remote Sensing Object Detection. Remote Sensing, 18(12), 1987. https://doi.org/10.3390/rs18121987

