A Real-Time Online Learning Framework for Joint 3D Reconstruction and Semantic Segmentation of Indoor Scenes
This paper presents a real-time online vision framework to jointly recover an indoor scene's 3D structure and semantic label. Given noisy depth maps, a camera trajectory, and 2D semantic labels at train time, the proposed deep neural network based approach learns to fuse the depth over frames w...
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Zusammenfassung: | This paper presents a real-time online vision framework to jointly recover an
indoor scene's 3D structure and semantic label. Given noisy depth maps, a
camera trajectory, and 2D semantic labels at train time, the proposed deep
neural network based approach learns to fuse the depth over frames with
suitable semantic labels in the scene space. Our approach exploits the joint
volumetric representation of the depth and semantics in the scene feature space
to solve this task. For a compelling online fusion of the semantic labels and
geometry in real-time, we introduce an efficient vortex pooling block while
dropping the use of routing network in online depth fusion to preserve
high-frequency surface details. We show that the context information provided
by the semantics of the scene helps the depth fusion network learn
noise-resistant features. Not only that, it helps overcome the shortcomings of
the current online depth fusion method in dealing with thin object structures,
thickening artifacts, and false surfaces. Experimental evaluation on the
Replica dataset shows that our approach can perform depth fusion at 37 and 10
frames per second with an average reconstruction F-score of 88% and 91%,
respectively, depending on the depth map resolution. Moreover, our model shows
an average IoU score of 0.515 on the ScanNet 3D semantic benchmark leaderboard. |
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DOI: | 10.48550/arxiv.2108.05246 |