Results for RAFTStereoReplicaGSO
Submission data
| Full name | StereoMatchingWithCustomDatasetPretrainingAndBenchmark-SpecificFine-Tuning |
| Description | This submission evaluates the effect of pretraining data on stereo matching performance. Two training strategies are compared. In the first strategy, the model is trained from scratch on a custom dataset and subsequently fine-tuned on ETH3D, KITTI, and Middlebury. In the second strategy, the model is trained from scratch on Scene Flow and then fine-tuned on the same benchmark datasets. Fine-tuning is performed whenever a dedicated training split is available, even when final evaluation is conducted through the benchmark platform. The objective is to assess whether pretraining on the custom dataset provides better transferability and downstream performance than pretraining on Scene Flow. |
| Parameters | Experiment 1:
- Train from scratch on CustomDataset - Fine-tune on ETH3D - Fine-tune on KITTI - Fine-tune on Middlebury Experiment 2: - Train from scratch on Scene Flow - Fine-tune on ETH3D - Fine-tune on KITTI - Fine-tune on Middlebury Note: Fine-tuning is performed whenever a separate training split is available. Expected outcome: models pretrained on CustomDataset achieve better performance after fine-tuning than models pretrained on Scene Flow. |
| Programming language(s) | Python, PyTorch, CUDA |
| Hardware | A100 |
| Submission creation date | 11 Jun, 2026 |
| Last edited | 11 Jun, 2026 |
High-res multi-view results
| Info | all | high-res multi-view | indoor | outdoor | botani. | boulde. | bridge | door | exhibi. | lectur. | living. | lounge | observ. | old co. | statue | terrac. |
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Low-res many-view results
| Info | all | low-res many-view | indoor | outdoor | delivery area | electro | forest | playground | terrains |
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Low-res two-view results
SLAM results
| all | boxes | boxes dark | buddha | cables 4 | cables 5 | desk 1 | desk 2 | desk changing 2 | desk dark 1 | desk dark 2 | desk global light changes | desk ir light | dino | drone | foreground occlusion | helmet | kidnap 2 | lamp | large loop 2 | large loop 3 | large non loop | motion 2 | motion 3 | motion 4 | planar 1 | reflective 2 | scale change | table 1 | table 2 | table 5 | table 6 | table global light changes | table local light changes | table scene | trashbin | |||
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