# 迈向统一多模态生成的视觉新范式
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| 方法 | 目标检测 | OCR文字检测 | GUI界面定位 | 人体关键点 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| COCO通用 | HR/RefCOCOg 视觉/文本指代 | LVIS长尾检测 | Dense200稠密检测 | VisDrone航拍检测 | HierText分层文字 | ICDAR15 | ScreenSpot-V2 | COCO人体关键点 | ||
| 框mAP | 框mAP | 框mAP | 框mAP | 框mAP | 点mAP | 框mAP | 框mAP | 框mAP | 点mAP | |
| Grounding DINO-Swin-T | 56.6 | 25.2 / 45.9 / 46.8 | 38.8 | 33.1 | 38.5 | -- | -- | -- | -- | -- |
| Bagel | 50.2 | 74.6 / 76.4 / 77.8 | 46.8 | 42.4 | 23.0 | 36.9 | 7.1 | 15.8 | 81.1 | -- |
| Qwen3-VL-8B-Instruct | 46.6 | 70.4 / 72.3 / 72.6 | 43.2 | 13.5 | 28.7 | 35.7 | 22.4 | 25.4 | 90.5 | -- |
| Qwen3.5-9B | 49.3 | 71.7 / 72.1 / 72.6 | 43.2 | 27.5 | 26.8 | 41.7 | 19.6 | 11.4 | 92.2 | -- |
| LocateAnything | 54.7 | 78.7 / 76.7 / 77.6 | 50.7 | 58.7 | 39.9 | 60.4 | 29.1 | 26.4 | 85.5 | -- |
| Rex-Omni | 52.9 | 79.9 / 73.6 / 74.3 | 46.9 | 58.3 | 35.8 | 58.9 | 28.0 | 28.1 | 88.4 | 32.6 |
| SenseNova-Vision | 56.6 | 80.2 / 79.6 / 80.5 | 54.8 | 66.8 | 43.3 | 62.9 | 31.2 | 49.5 | 85.9 | 34.6 |
| 方法 | 深度估计 | 表面法向估计 | ||||||
|---|---|---|---|---|---|---|---|---|
| NYUv2室内 | KITTI自动驾驶 | ETH3D实景重建 | ScanNet室内重建 | DIODE室外深度 | ScanNet | iBims-1 | NYUv2 | |
| AbsRel误差↓ / δ1精度↑ | 平均角度误差↓ / 11.25°内占比↑ | |||||||
| DSINE | -- | -- | -- | -- | -- | 16.2 / 61.0 | 17.1 / 67.4 | 16.4 / 59.6 |
| DepthAnything | 4.3 / 98.1 | 7.6 / 94.7 | 12.7 / 88.2 | 4.3 / 98.1 | 26.0 / 75.9 | -- | -- | -- |
| DepthAnything V2 | 4.5 / 97.9 | 7.4 / 94.6 | 13.1 / 86.5 | 4.2 / 97.8 | 26.5 / 73.4 | -- | -- | -- |
| *MoGe-2 | 3.5 / 98.0 | 5.5 / 97.7 | 3.4 / 98.8 | 3.4 / 98.3 | 23.0 / 82.3 | 12.8 / 68.4 | 14.7 / 70.4 | 14.7 / 62.3 |
| Marigold | 5.5 / 96.4 | 9.9 / 91.6 | 6.5 / 95.9 | 6.4 / 95.2 | 30.8 / 77.3 | 21.3 / 45.6 | 18.5 / 64.7 | 20.9 / 50.5 |
| DICEPTION | 6.1 / 96.0 | 6.9 / 94.9 | 5.0 / 97.5 | 7.2 / 94.4 | 28.9 / 72.2 | 18.8 / 53.6 | -- | 18.3 / 52.9 |
| FE2E | 4.1 / 97.7 | 6.6 / 96.0 | 3.8 / 98.7 | 4.4 / 97.5 | 22.8 / 81.2 | 13.8 / 67.2 | 15.1 / 70.6 | 16.2 / 59.6 |
| Lotus-2 | 4.1 / 97.6 | 6.7 / 94.5 | 4.6 / 98.1 | 4.2 / 97.6 | 22.1 / 75.2 | 14.2 / 66.8 | 15.4 / 70.4 | 16.9 / 59.0 |
| SenseNova-Vision | 4.0 / 98.1 | 5.9 / 95.9 | 4.3 / 97.4 | 3.9 / 98.0 | 20.6 / 76.4 | 12.8 / 68.9 | 15.4 / 69.1 | 14.4 / 62.7 |
| 方法 | 通用分割 | 指代分割 | 推理分割 | 对话分割 | 交互式分割 |
|---|---|---|---|---|---|
| 全景IoU / 语义IoU | RefCOCO / RefCOCO+ / RefCOCOg cIoU | 验证集 / 测试集 gIoU | 验证集 / 测试集 gIoU | 点输入 / 框输入 mIoU | |
| LISA-7B | -- | 74.9 / 65.1 / 67.9 | 52.9 / 47.3 | 62.0 / 61.7 | -- |
| PSALM | 55.9 / 66.6 | 83.6 / 72.9 / 73.8 | -- | -- | 64.3 / 67.3 |
| Text4Seg | -- | 79.2 / 72.8 / 74.0 | 59.1 / 57.1 | -- | -- |
| LENS | -- | 84.2 / 79.4 / 81.2 | 62.1 / 57.2 | -- | -- |
| ConverSeg | -- | 79.4 / 74.3 / 74.9 | 61.9 / 57.0 | -- | -- |
| X-SAM | 54.7 / 66.5 | 85.1 / 78.0 / 83.8 | 56.6 / 57.8 | 69.4 / 69.0 | 65.4 / 70.0 |
| SenseNova-Vision | 48.8 / 64.0 | 81.3 / 76.0 / 80.3 | 63.2 / 60.7 | 65.7 / 66.2 | 60.9 / 73.9 |
| 方法 | 多视图重建 | 相机位姿估计 | ||
|---|---|---|---|---|
| 精度误差↓ / 完整度误差↓ / F1分数↑ | 旋转精度RRA@30↑ / 平移RTA@30↑ / AUC@30↑ | |||
| 7Scenes室内场景 | ETH3D实景数据集 | Re10K | CO3Dv2 | |
| DUSt3R | 0.026 / 0.034 / 87.1 | 0.359 / 0.531 / 66.6 | 99.8 / 84.9 / 67.6 | 97.7 / 93.4 / 78.3 |
| DepthAnything3 | 0.020 / 0.026 / 90.5 | 0.228 / 0.212 / 76.6 | 100.0 / 96.4 / 89.6 | 99.3 / 98.0 / 91.8 |
| VGGT | 0.023 / 0.032 / 88.4 | 0.177 / 0.155 / 80.9 | 100.0 / 93.5 / 79.3 | 98.3 / 96.6 / 89.2 |
| MoRe | 0.038 / 0.039 / 77.1 | 0.348 / 0.318 / 62.7 | 100.0 / 94.0 / 79.1 | 98.4 / 96.3 / 83.0 |
| MapAnything | 0.027 / 0.029 / 87.8 | 0.400 / 0.524 / 67.0 | 100.0 / 93.5 / 80.7 | 95.5 / 91.6 / 70.9 |
| G2VLM | 0.084 / 0.056 / 59.2 | 0.784 / 0.553 / 36.7 | 99.8 / 77.5 / 51.8 | 96.3 / 92.0 / 55.2 |
| SenseNova-Vision | 0.028 / 0.026 / 87.9 | 0.301 / 0.175 / 72.2 | 99.8 / 94.2 / 77.3 | 97.4 / 95.4 / 80.1 |
| 方法 | 目标检测 | 语义分割 | 指代分割 | 深度估计 |
|---|---|---|---|---|
| mAP | mIoU | cIoU | δ1精度 | |
| COCO数据集 | Cityscapes城市场景 | RefCOCO / + / g | NYUv2室内 | |
| Youtu-VL | 47.1 | 70.4 | 80.7 / 76.2 / 76.5 | 90.4 |
| SenseNova-Vision | 53.7 | 71.2 | 81.3 / 76.0 / 80.3 | 98.1 |
| 方法 | 语义分割 | 指代分割 | 推理分割 | 深度估计 | 表面法向 | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| mIoU | cIoU | gIoU | δ1精度 | 平均角度误差↓ | ||||||
| Cityscapes | RefCOCOg | ReasonSeg | KITTI | NYUv2 | DIODE | ETH3D | NYUv2 | ScanNet | DIODE | |
| Vision Banana | 69.9 | 73.8 | 79.3 | 91.5 | 94.8 | 91.7 | 93.5 | 17.8 | 15.1 | 13.8 |
| SenseNova-Vision | 71.2 | 80.3 | 63.2 | 95.9 | 98.1 | 76.4 | 97.4 | 14.4 | 12.8 | 15.3 |
| 方法 | 跨模态理解 | 图文生成 | |||
|---|---|---|---|---|---|
| MMMU多模态问答 | MMVP视觉推理 | MathVista数学图文 | GenEval生成评测 | WISE图文对齐 | |
| Bagel | 0.55 | 69.3 | 73.1 | 0.82 | 0.52 |
| SenseNova-Vision | 0.42 | 79.0 | 67.7 | 0.85 | 0.45 |