Neural Mesh-Based Graphics
About
We revisit NPBG, the popular approach to novel view synthesis that introduced the ubiquitous point feature neural rendering paradigm. We are interested in particular in data-efficient learning with fast view synthesis. We achieve this through a view-dependent mesh-based denser point descriptor rasterization, in addition to a foreground/background scene rendering split, and an improved loss. By training solely on a single scene, we outperform NPBG, which has been trained on ScanNet and then scene finetuned. We also perform competitively with respect to the state-of-the-art method SVS, which has been trained on the full dataset (DTU and Tanks and Temples) and then scene finetuned, in spite of their deeper neural renderer.
Shubhendu Jena, Franck Multon, Adnane Boukhayma• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Classification | Liver ultrasound dataset (10% train, 90% test) | Accuracy72.6 | 40 | |
| Semi-supervised classification | ADNI CN vs. AD (90% test) | Accuracy76.2 | 40 | |
| Semi-supervised classification | ADNI CN vs. MCI (10% train, 90% test) | Accuracy78.7 | 20 | |
| Semi-supervised classification | MedMNIST Breast (10% train 90% test) | Accuracy81.7 | 20 | |
| Semi-supervised classification | NIFD (10% train, 90% test) | Accuracy69.2 | 20 |
Showing 5 of 5 rows