UDF-3D: Uncertainty-Driven Decision-Level Fusion for Camera–LiDAR 3D Object Detection
Abstract
1. Introduction
2. Related Work
3. Method
3.1. Object Uncertainty Quantification
3.2. Uncertainty-Weighted Cross-Modal Object Matching
| Algorithm 1 Uncertainty-weighted cross-modal matching |
| Input: Camera detections , LiDAR detections . |
| Output: Matching result. |
|
3.3. Frustum Re-Evaluation for Unmatched Detections
3.4. Uncertainty-Discounted Decision-Level Fusion
4. Experiments
4.1. Dataset and Evaluation Metrics
4.2. Detector Settings
4.3. Results and Analysis
4.4. Ablation Study
4.5. Sensitivity Analysis of the Decay Factor
4.6. Computational Complexity
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Method | Modality | mAP | Car | Pedestrian | Cyclist | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Mod. | Easy | Mod. | Hard | Easy | Mod. | Hard | Easy | Mod. | Hard | ||
| SECOND (Baseline) [3] | L | 66.50 | 90.55 | 81.61 | 78.60 | 55.94 | 51.15 | 46.17 | 80.96 | 66.74 | 62.78 |
| SECOND + YOLOv8 | L & I | 71.87 | 92.15 | 83.32 | 80.41 | 66.42 | 60.19 | 55.65 | 87.14 | 72.11 | 65.49 |
| SECOND + RT-DETR | L & I | 72.29 | 91.59 | 83.06 | 80.17 | 65.20 | 61.16 | 55.18 | 82.66 | 72.64 | 68.33 |
| PointPillars (Baseline) [4] | L | 63.93 | 87.76 | 77.40 | 75.19 | 57.31 | 51.45 | 46.87 | 81.57 | 62.94 | 58.96 |
| PointPillars + YOLOv8 | L & I | 71.11 | 88.83 | 80.01 | 77.11 | 67.36 | 61.20 | 56.73 | 86.15 | 72.11 | 67.63 |
| PointPillars + RT-DETR | L & I | 71.53 | 88.00 | 79.64 | 76.70 | 66.20 | 62.28 | 58.06 | 86.21 | 72.68 | 68.24 |
| PartA2 (Baseline) [5] | L | 70.89 | 92.45 | 82.88 | 80.64 | 66.84 | 59.69 | 54.58 | 90.35 | 70.10 | 66.97 |
| PartA2 + YOLOv8 | L & I | 75.75 | 93.17 | 83.81 | 82.63 | 77.07 | 70.31 | 63.94 | 90.90 | 73.14 | 70.14 |
| PartA2 + RT-DETR | L & I | 76.69 | 92.06 | 83.07 | 82.62 | 76.34 | 70.45 | 65.69 | 91.92 | 76.55 | 72.32 |
| Method | Modality | mAP | Car | Pedestrian | Cyclist | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Mod. | Easy | Mod. | Hard | Easy | Mod. | Hard | Easy | Mod. | Hard | ||
| SECOND (Baseline) | L | 71.42 | 92.42 | 88.55 | 87.65 | 60.74 | 56.57 | 52.13 | 86.04 | 69.15 | 66.90 |
| SECOND + YOLOv8 | L & I | 78.19 | 93.41 | 90.04 | 89.68 | 72.01 | 65.91 | 61.49 | 89.78 | 78.61 | 74.04 |
| SECOND + RT-DETR | L & I | 78.93 | 93.22 | 90.16 | 89.88 | 71.34 | 67.44 | 63.28 | 88.19 | 79.18 | 74.66 |
| PointPillars (Baseline) | L | 70.14 | 92.04 | 88.06 | 86.67 | 61.58 | 56.01 | 52.01 | 85.27 | 66.34 | 62.35 |
| PointPillars + YOLOv8 | L & I | 78.23 | 93.34 | 90.05 | 87.44 | 73.69 | 67.44 | 63.02 | 91.46 | 77.21 | 72.52 |
| PointPillars + RT-DETR | L & I | 78.93 | 93.01 | 89.99 | 87.40 | 72.91 | 68.94 | 64.61 | 92.03 | 77.87 | 75.57 |
| PartA2 (Baseline) | L | 76.05 | 93.55 | 89.38 | 87.13 | 70.50 | 64.10 | 59.17 | 91.93 | 74.66 | 70.61 |
| PartA2 + YOLOv8 | L & I | 81.39 | 94.76 | 91.12 | 89.14 | 81.39 | 74.60 | 69.60 | 92.45 | 78.45 | 74.00 |
| PartA2 + RT-DETR | L & I | 82.87 | 94.88 | 91.55 | 89.74 | 80.64 | 76.05 | 71.34 | 94.62 | 81.02 | 76.74 |
| Method | Modality | mAP | Car | Pedestrian | Cyclist | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Mod. | Easy | Mod. | Hard | Easy | Mod. | Hard | Easy | Mod. | Hard | ||
| F-PointNet [35] | L & I | 62.91 | 83.76 | 70.92 | 63.65 | 70.00 | 61.32 | 53.59 | 77.15 | 56.49 | 53.37 |
| F-PointPillars [36] | L & I | 71.32 | 88.90 | 79.28 | 78.07 | 66.11 | 61.89 | 56.91 | 87.54 | 72.78 | 66.07 |
| PointFusion [12] | L & I | 40.15 | 77.92 | 63.00 | 53.27 | 33.36 | 28.04 | 23.38 | 49.34 | 29.42 | 26.98 |
| PointPainting [13] | L & I | 70.34 | 88.38 | 77.74 | 76.76 | 69.38 | 61.67 | 54.58 | 85.21 | 71.62 | 66.98 |
| EPNet++ [18] | L & I | 70.80 | 92.51 | 83.17 | 82.27 | 73.77 | 65.42 | 59.13 | 86.23 | 63.82 | 60.02 |
| 3D-CVF [37] | L & I | - | 89.67 | 79.88 | 78.47 | - | - | - | - | - | - |
| CAT-Det [38] | L & I | 73.54 | 90.12 | 81.46 | 79.15 | 74.08 | 66.35 | 58.92 | 87.64 | 72.82 | 68.20 |
| CLOCs [24] | L & I | 69.45 | 92.89 | 83.07 | 78.65 | 64.68 | 57.37 | 51.19 | 87.57 | 67.92 | 63.67 |
| UDF-3D (SD+YL) | L & I | 71.87 | 92.15 | 83.32 | 80.41 | 66.42 | 60.19 | 55.65 | 87.14 | 72.11 | 65.49 |
| UDF-3D (PA+YL) | L & I | 75.75 | 93.17 | 83.81 | 82.63 | 77.07 | 70.31 | 63.94 | 90.90 | 73.14 | 70.14 |
| UDF-3D (PA+RD) | L & I | 76.69 | 92.06 | 83.07 | 82.62 | 76.34 | 70.45 | 65.69 | 91.92 | 76.55 | 72.32 |
| Method | Modality | mAP | Car | Pedestrian | Cyclist | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Mod. | Easy | Mod. | Hard | Easy | Mod. | Hard | Easy | Mod. | Hard | ||
| F-PointNet [35] | L & I | 70.15 | 88.16 | 84.02 | 76.44 | 72.38 | 66.39 | 59.57 | 81.82 | 60.03 | 56.32 |
| F-PointPillars [36] | L & I | 78.04 | 90.20 | 89.43 | 88.77 | 72.17 | 67.89 | 63.46 | 88.58 | 76.79 | 74.80 |
| PointFusion [12] | L & I | 47.08 | 87.45 | 76.13 | 65.32 | 37.91 | 32.35 | 27.35 | 54.02 | 32.77 | 30.19 |
| PointPainting [13] | L & I | 75.80 | 90.19 | 87.64 | 86.71 | 72.65 | 66.06 | 61.24 | 86.33 | 73.69 | 70.17 |
| EPNet++ [18] | L & I | 75.36 | 95.98 | 89.08 | 88.86 | 78.23 | 72.09 | 66.17 | 86.25 | 64.91 | 61.30 |
| 3D-CVF [37] | L & I | - | 93.52 | 89.56 | 82.45 | - | - | - | - | - | - |
| CAT-Det [38] | L & I | 70.45 | 92.59 | 90.07 | 85.82 | 57.13 | 48.78 | 45.56 | 85.35 | 72.51 | 65.55 |
| CLOCs [24] | L & I | 75.65 | 96.18 | 92.53 | 89.43 | 69.26 | 63.13 | 56.79 | 91.35 | 71.30 | 67.65 |
| UDF-3D (SD+YL) | L & I | 78.19 | 93.41 | 90.04 | 89.68 | 72.01 | 65.91 | 61.49 | 89.78 | 78.61 | 74.04 |
| UDF-3D (PA+YL) | L & I | 81.39 | 94.76 | 91.12 | 89.14 | 81.39 | 74.60 | 69.60 | 92.45 | 78.45 | 74.00 |
| UDF-3D (PA+RD) | L & I | 82.87 | 94.88 | 91.55 | 89.74 | 80.64 | 76.05 | 71.34 | 94.62 | 81.02 | 76.74 |
| U-Weighted Matching | Discounted Fusion | Frustum Re-Evaluation | 3D APR40 | BEV APR40 | ||||
|---|---|---|---|---|---|---|---|---|
| Easy | Mod. | Hard | Easy | Mod. | Hard | |||
| ✗ | ✗ | ✗ | 75.55 | 63.93 | 60.34 | 79.63 | 70.14 | 67.01 |
| ✓ | ✗ | ✗ | 76.99 | 66.18 | 62.50 | 82.01 | 73.65 | 70.18 |
| ✗ | ✓ | ✗ | 78.12 | 68.54 | 65.18 | 83.67 | 75.95 | 73.03 |
| ✓ | ✓ | ✗ | 80.42 | 70.72 | 66.74 | 85.86 | 77.86 | 74.02 |
| ✓ | ✗ | ✓ | 78.55 | 69.20 | 65.36 | 84.28 | 76.54 | 73.68 |
| ✓ | ✓ | ✓ | 80.78 | 71.11 | 67.16 | 86.16 | 78.23 | 74.33 |
| 3D Easy | 3D Mod. | 3D Hard | |
|---|---|---|---|
| 1.0 | 80.42 | 70.73 | 66.84 |
| 1.5 | 80.61 | 70.96 | 67.02 |
| 2.5 | 80.78 | 71.11 | 67.16 |
| 3.5 | 80.66 | 71.03 | 67.08 |
| 4.0 | 80.51 | 70.88 | 66.95 |
| Group | Method/Module | Speed (ms) | GFLOPS | GPU Memory (MB) | FPS |
|---|---|---|---|---|---|
| UDF-3D modules | LiDAR branch (PointPillars) | 24.44 | 62.82 | 248.07 | – |
| RGB branch (YOLOv8/RT-DETR) | 19.30/64.24 | 79.07/251.75 | 150.90/203.40 | – | |
| Uncertainty Quantification | 0.59 | 0.00 | 0.00 | – | |
| Frustum Re-evaluation | 10.57 | 0.00 | 29.42 | – | |
| Uncertainty-Discounted Fusion | 0.16 | 0.00 | 0.00 | – | |
| End-to-end | UDF-3D | 35.76/75.56 | 141.89/314.57 | 428.39/480.89 | 27.96/13.23 |
| EPNet++ | 169.79 | 357.85 | 5059.64 | 5.89 | |
| PointPainting | 271.77 | 1782.02 | 742.06 | 3.68 |
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Hu, C.; Di, C.; Liu, Y. UDF-3D: Uncertainty-Driven Decision-Level Fusion for Camera–LiDAR 3D Object Detection. Appl. Sci. 2026, 16, 5983. https://doi.org/10.3390/app16125983
Hu C, Di C, Liu Y. UDF-3D: Uncertainty-Driven Decision-Level Fusion for Camera–LiDAR 3D Object Detection. Applied Sciences. 2026; 16(12):5983. https://doi.org/10.3390/app16125983
Chicago/Turabian StyleHu, Chongyang, Chuangye Di, and Yanwei Liu. 2026. "UDF-3D: Uncertainty-Driven Decision-Level Fusion for Camera–LiDAR 3D Object Detection" Applied Sciences 16, no. 12: 5983. https://doi.org/10.3390/app16125983
APA StyleHu, C., Di, C., & Liu, Y. (2026). UDF-3D: Uncertainty-Driven Decision-Level Fusion for Camera–LiDAR 3D Object Detection. Applied Sciences, 16(12), 5983. https://doi.org/10.3390/app16125983
