End2End Semantic Segmentation for 3D Indoor Scenes

Author(s):  
Na Zhao
Author(s):  
L. S. Runceanu ◽  
N. Haala

<p><strong>Abstract.</strong> This work addresses the automatic reconstruction of objects useful for BIM, like walls, floors and ceilings, from meshed and textured mapped 3D point clouds of indoor scenes. For this reason, we focus on the semantic segmentation of 3D indoor meshes as the initial step for the automatic generation of BIM models. Our investigations are based on the benchmark dataset ScanNet, which aims at the interpretation of 3D indoor scenes. For this purpose it provides 3D meshed representations as collected from low cost range cameras. In our opinion such RGB-D data has a great potential for the automated reconstruction of BIM objects.</p>


IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 89575-89583
Author(s):  
Yanran Wang ◽  
Qingliang Chen ◽  
Shilang Chen ◽  
Junjun Wu

2016 ◽  
Vol 16 (12) ◽  
pp. 334
Author(s):  
Eric Palmer ◽  
TaeKyu Kwon ◽  
Zygmunt Pizlo

Author(s):  
Davide Menini ◽  
Suryansh Kumar ◽  
Martin R. Oswald ◽  
Erik Sandstrom ◽  
Cristian Sminchisescu ◽  
...  

2021 ◽  
Vol 13 (16) ◽  
pp. 3140
Author(s):  
Liman Liu ◽  
Jinjin Yu ◽  
Longyu Tan ◽  
Wanjuan Su ◽  
Lin Zhao ◽  
...  

In order to deal with the problem that some existing semantic segmentation networks for 3D point clouds generally have poor performance on small objects, a Spatial Eight-Quadrant Kernel Convolution (SEQKC) algorithm is proposed to enhance the ability of the network for extracting fine-grained features from 3D point clouds. As a result, the semantic segmentation accuracy of small objects in indoor scenes can be improved. To be specific, in the spherical space of the point cloud neighborhoods, a kernel point with attached weights is constructed in each octant, the distances between the kernel point and the points in its neighborhood are calculated, and the distance and the kernel points’ weights are used together to weight the point cloud features in the neighborhood space. In this case, the relationship between points are modeled, so that the local fine-grained features of the point clouds can be extracted by the SEQKC. Based on the SEQKC, we design a downsampling module for point clouds, and embed it into classical semantic segmentation networks (PointNet++, PointSIFT and PointConv) for semantic segmentation. Experimental results on benchmark dataset ScanNet V2 show that SEQKC-based PointNet++, PointSIFT and PointConv outperform the original networks about 1.35–2.12% in terms of MIoU, and they effectively improve the semantic segmentation performance of the networks for small objects of indoor scenes, e.g., the segmentation accuracy of small object “picture” is improved from 0.70% of PointNet++ to 10.37% of SEQKC-PointNet++.


2019 ◽  
Vol 35 (6-8) ◽  
pp. 1157-1169 ◽  
Author(s):  
Suiyun Zhang ◽  
Zhizhong Han ◽  
Yu-Kun Lai ◽  
Matthias Zwicker ◽  
Hui Zhang

Author(s):  
Fan Zhu ◽  
Li Liu ◽  
Jin Xie ◽  
Fumin Shen ◽  
Ling Shao ◽  
...  

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