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Panoptic Multi-TSDFs: a Flexible Representation for Online Multi-resolution Volumetric Mapping and Long-term Dynamic Scene Consistency

About

For robotic interaction in environments shared with other agents, access to volumetric and semantic maps of the scene is crucial. However, such environments are inevitably subject to long-term changes, which the map needs to account for. We thus propose panoptic multi-TSDFs as a novel representation for multi-resolution volumetric mapping in changing environments. By leveraging high-level information for 3D reconstruction, our proposed system allocates high resolution only where needed. Through reasoning on the object level, semantic consistency over time is achieved. This enables our method to maintain up-to-date reconstructions with high accuracy while improving coverage by incorporating previous data. We show in thorough experimental evaluation that our map can be efficiently constructed, maintained, and queried during online operation, and that the presented approach can operate robustly on real depth sensors using non-optimized panoptic segmentation as input.

Lukas Schmid, Jeffrey Delmerico, Johannes Sch\"onberger, Juan Nieto, Marc Pollefeys, Roland Siegwart, Cesar Cadena• 2021

Related benchmarks

TaskDatasetResultRank
3D Panoptic MappingScanNetV2 (val)
PQ47.11
14
3D Panoptic MappingHypersim (val)
FPS2.95
10
3D Panoptic MappingHypersim (test)--
9
Semantic MappingSemanticKITTI (scenes 6-10)
FPS4.43
6
Semantic MappingSceneNet Closed-set (12 full scenes)
FPS2.49
6
Geometric Mapping AccuracyKITTI
Avg Chamfer Distance6.079
4
Geometric Mapping AccuracySceneNet (SN)
Avg Chamfer Distance0.008
4
3D Panoptic MappingScanNet hidden v2 (test)
mIoU (instance)52.9
2
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