Image Segmentation
Collection
8 items β’ Updated
Multimodal (CBCT / MR / CT) anatomical body segmentation (11 structures), built with KonfAI. One model handles all three modalities.
| Model | Input | Output | Labels | Ensemble |
|---|---|---|---|---|
body |
Volume (CT / MR / CBCT) | Segmentation | 11 | 1 |
2.5D residual-encoder UNet Β· patch [1, 192, 192] Β· resampled to 3 mm.
pip install impact_seg_konfai
impact-seg-konfai segment body -i input.nii.gz -o output/
konfai-apps infer VBoussot/ImpactSeg:body -i input.nii.gz -o output/Benchmarked on an NVIDIA RTX PRO 5000 (24 GB). The batch size is auto-selected from your free GPU VRAM.
| Free VRAM | Batch (auto) | Peak VRAM |
|---|---|---|
| 8 GB | 160 | ~7 GB |
| 16 GB | 320 | ~14 GB |
| 24 GB | 512 | ~22 GB |
β 16 s / case on the benchmark volume (scales with case size). Override with --patch-size / --batch-size.