FreeOcc: Training-free Panoptic Occupancy Prediction via Foundation Models
Andrew Caunes, Thierry Chateau, Vincent Fremont

TL;DR
FreeOcc introduces a training-free method for panoptic occupancy prediction using foundation models, enabling dense 3D scene understanding from multi-view images without domain-specific training.
Contribution
It leverages pretrained foundation models for semantic and geometric reconstruction, eliminating the need for costly training or domain-specific data.
Findings
Achieves state-of-the-art train-free panoptic occupancy metrics.
Surpasses weakly supervised methods when used for pseudo-label generation.
Sets new baselines for train-free and weakly supervised panoptic occupancy prediction.
Abstract
Semantic and panoptic occupancy prediction for road scene analysis provides a dense 3D representation of the ego vehicle's surroundings. Current camera-only approaches typically rely on costly dense 3D supervision or require training models on data from the target domain, limiting deployment in unseen environments. We propose FreeOcc, a training-free pipeline that leverages pretrained foundation models to recover both semantics and geometry from multi-view images. FreeOcc extracts per-view panoptic priors with a promptable foundation segmentation model and prompt-to-taxonomy rules, and reconstructs metric 3D points with a reconstruction foundation model. Depth- and confidence- aware filtering lifts reliable labels into 3D, which are fused over time and voxelized with a deterministic refinement stack. For panoptic occupancy, instances are recovered by fitting and merging robust…
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Taxonomy
TopicsAdvanced Neural Network Applications · Autonomous Vehicle Technology and Safety · 3D Shape Modeling and Analysis
