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Papers/PanopticFusion: Online Volumetric Semantic Mapping at the ...

PanopticFusion: Online Volumetric Semantic Mapping at the Level of Stuff and Things

Gaku Narita, Takashi Seno, Tomoya Ishikawa, Yohsuke Kaji

2019-03-04Panoptic Segmentation3D Instance SegmentationSemantic SegmentationInstance Segmentation
PaperPDF

Abstract

We propose PanopticFusion, a novel online volumetric semantic mapping system at the level of stuff and things. In contrast to previous semantic mapping systems, PanopticFusion is able to densely predict class labels of a background region (stuff) and individually segment arbitrary foreground objects (things). In addition, our system has the capability to reconstruct a large-scale scene and extract a labeled mesh thanks to its use of a spatially hashed volumetric map representation. Our system first predicts pixel-wise panoptic labels (class labels for stuff regions and instance IDs for thing regions) for incoming RGB frames by fusing 2D semantic and instance segmentation outputs. The predicted panoptic labels are integrated into the volumetric map together with depth measurements while keeping the consistency of the instance IDs, which could vary frame to frame, by referring to the 3D map at that moment. In addition, we construct a fully connected conditional random field (CRF) model with respect to panoptic labels for map regularization. For online CRF inference, we propose a novel unary potential approximation and a map division strategy. We evaluated the performance of our system on the ScanNet (v2) dataset. PanopticFusion outperformed or compared with state-of-the-art offline 3D DNN methods in both semantic and instance segmentation benchmarks. Also, we demonstrate a promising augmented reality application using a 3D panoptic map generated by the proposed system.

Results

TaskDatasetMetricValueModel
Semantic SegmentationScanNettest mIoU52.9PanopticFusion
Semantic SegmentationScanNetPQ33.5PanopticFusion
Semantic SegmentationScanNetPQ_st58.4PanopticFusion
Semantic SegmentationScanNetPQ_th30.8PanopticFusion
Semantic SegmentationScanNetV2PQ33.5PanopticFusion (with CRF)
Semantic SegmentationScanNetV2RQ45.3PanopticFusion (with CRF)
Semantic SegmentationScanNetV2SQ73PanopticFusion (with CRF)
10-shot image generationScanNettest mIoU52.9PanopticFusion
10-shot image generationScanNetPQ33.5PanopticFusion
10-shot image generationScanNetPQ_st58.4PanopticFusion
10-shot image generationScanNetPQ_th30.8PanopticFusion
10-shot image generationScanNetV2PQ33.5PanopticFusion (with CRF)
10-shot image generationScanNetV2RQ45.3PanopticFusion (with CRF)
10-shot image generationScanNetV2SQ73PanopticFusion (with CRF)
Panoptic SegmentationScanNetPQ33.5PanopticFusion
Panoptic SegmentationScanNetPQ_st58.4PanopticFusion
Panoptic SegmentationScanNetPQ_th30.8PanopticFusion
Panoptic SegmentationScanNetV2PQ33.5PanopticFusion (with CRF)
Panoptic SegmentationScanNetV2RQ45.3PanopticFusion (with CRF)
Panoptic SegmentationScanNetV2SQ73PanopticFusion (with CRF)

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