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3 months ago

PanopticNDT: Efficient and Robust Panoptic Mapping

Daniel Seichter Benedict Stephan Söhnke Benedikt Fischedick Steffen Müller Leonard Rabes Horst-Michael Gross

PanopticNDT: Efficient and Robust Panoptic Mapping

Abstract

As the application scenarios of mobile robots are getting more complex and challenging, scene understanding becomes increasingly crucial. A mobile robot that is supposed to operate autonomously in indoor environments must have precise knowledge about what objects are present, where they are, what their spatial extent is, and how they can be reached; i.e., information about free space is also crucial. Panoptic mapping is a powerful instrument providing such information. However, building 3D panoptic maps with high spatial resolution is challenging on mobile robots, given their limited computing capabilities. In this paper, we propose PanopticNDT - an efficient and robust panoptic mapping approach based on occupancy normal distribution transform (NDT) mapping. We evaluate our approach on the publicly available datasets Hypersim and ScanNetV2. The results reveal that our approach can represent panoptic information at a higher level of detail than other state-of-the-art approaches while enabling real-time panoptic mapping on mobile robots. Finally, we prove the real-world applicability of PanopticNDT with qualitative results in a domestic application.

Code Repositories

tui-nicr/emsaformer
pytorch
Mentioned in GitHub
tui-nicr/emsanet
pytorch
Mentioned in GitHub
tui-nicr/panoptic-mapping
Official
pytorch
Mentioned in GitHub
tui-nicr/nicr-scene-analysis-datasets
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-semantic-segmentation-on-hypersimSemanticNDT (10cm)
mIoU: 44.31
mIoU (test): 44.8
3d-semantic-segmentation-on-hypersimPanopticNDT (10cm)
mIoU: 45.43
mIoU (test): 45.34
panoptic-segmentation-on-hypersimEMSANet (2x ResNet-34 NBt1D)
PQ: 34.95
PQ (test): 29.77
mIoU: 49.12
mIoU (test): 44.66
panoptic-segmentation-on-nyu-depth-v2EMSANet (2x ResNet-34 NBt1D, PanopticNDT version, finetuned)
PQ: 51.15
panoptic-segmentation-on-scannetv2PanopticNDT (10cm)
PQ: 59.19
semantic-segmentation-on-hypersimEMSANet (2x ResNet-34 NBt1D)
mIoU: 49.74
mIoU (test): 46.66
semantic-segmentation-on-nyu-depth-v2EMSANet (2x ResNet-34 NBt1D, PanopticNDT version, finetuned)
Mean IoU: 59.02
semantic-segmentation-on-scannetPanopticNDT (10cm)
test mIoU: 68.1
val mIoU: 68.39
semantic-segmentation-on-scannetv2EMSANet (2x ResNet-34 NBt1D, PanopticNDT version)
Mean IoU: 60.0%
Mean IoU (test): 60.0%
Mean IoU (val): 70.99%
semantic-segmentation-on-sun-rgbdEMSANet (2x ResNet-34 NBt1D, PanopticNDT version, finetuned)
Mean IoU: 50.86%

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PanopticNDT: Efficient and Robust Panoptic Mapping | Papers | HyperAI