PhysicalAI Autonomous Vehicles NuRec-AV-Object-Benchmark
Dataset Description
The NuRec-AV-Object-Benchmark is an object-centric benchmark for evaluating image-to-3D reconstruction systems on autonomous vehicle data. Introduced alongside Asset Harvester, it is designed to support systematic evaluation of in-the-wild AV object reconstruction under realistic viewpoint bias and sensor noise.
Unlike curated object datasets with dense coverage, this benchmark reflects the sparse and imperfect observation regime found in real driving logs. Objects are often seen from only one or a few views, with heavy occlusion, motion blur, noisy calibration, rolling-shutter effects, and imperfect geometric alignment.
Each sample is organized under a semantic object category and a sample identifier, and includes object-centric RGB crops, foreground masks, and camera metadata. The benchmark is distributed in two complementary parts:
Part_A: a held-out-view evaluation split withinput_views/andreserved_views/Part_B: a harder no-ground-truth split withinput_views/only
Supported categories
commercial_vehiclesconsumer_vehiclesother_objectsVRU_pedestriansVRU_riders
Dataset Structure
Part_A: held-out-view evaluation
Part_A provides input_views/ together with reserved_views/ that are not used as model input. These reserved views act as held-out reference targets for quantitative evaluation.
Each Part_A sample contains:
input_views/reserved_views/- per-view
frame_XX.jpeg - per-view
mask_XX.png camera.json
Part_B: hard no-ground-truth split
Part_B is intentionally more challenging. It contains stronger motion blur, heavier occlusion, and narrower view coverage. No reserved reference views are provided, so this split is intended for harder qualitative or perceptual evaluation settings.
Each Part_B sample contains:
input_views/- per-view
frame_XX.jpeg - per-view
mask_XX.png camera.json
Dataset summary
- Total samples:
3716 Part_A:2206samplesPart_B:1510samples
Split composition
Part_A
commercial_vehicles:308consumer_vehicles:1472other_objects:55VRU_pedestrians:330VRU_riders:41
Part_B
commercial_vehicles:405consumer_vehicles:602other_objects:90VRU_pedestrians:383VRU_riders:30
Creation date
- Dataset creation date:
2026-03-25
Reference
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