--- library_name: pimm datasets: - DeepLearnPhysics/PILArNet-M tags: - particle-physics - lartpc - point-cloud --- # PoLAr-MAE — semantic segmentation [PoLAr-MAE](https://arxiv.org/abs/2502.02558) fine-tuned for 4-class LArTPC semantic segmentation (shower, track, Michel, delta); reproduces the paper mF1 ≈ 0.82. - **pimm type:** `PoLArMAE-SemSeg` · 4 classes ## Loading ```python import pimm model = pimm.from_pretrained("hf://deeplearnphysics/polar-mae-semantic") ``` ## Provenance Repackaged from the original [PoLAr-MAE](https://github.com/DeepLearnPhysics/PoLAr-MAE) release checkpoints into the [pimm](https://github.com/youngsm/particle-imaging-models) export format. Inherits the source repo license.