Understanding the Imperfection of 3D point Cloud and Semantic Segmentation algorithms for 3D Models of Indoor Environment

Guoray Cai, Yimu Pan
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引用次数: 1

Abstract

Abstract. Point clouds data provides new potentials for automated construction of more geometrically accurate and semantically rich 3D models for indoor environments. Recent advances in deep learning methods on point cloud semantic segmentation demonstrated impressive accuracy in labeling points of 3D surfaces with object classes. However, it remains challenging to reconstruct the shape of semantic objects from semantically-labeled 3D points, due to imperfection of such data and the under-determination of object construction algorithms. We have little empirical knowledge about how data imperfections affect the reconstruction of 3D indoor room objects. This paper contributes to understanding the nature of such imperfection of 3D point cloud data and semantic segmentation algorithms by analyzing the reconstructability of indoor room objects from semantically-labeled point cloud. 181 rooms from Stanford Large-Scale 3D Indoor Spaces Dataset (S3DIS) were used in our experiment. After generating semantic labels on point-clouds using PointNet++ segmentic segmentation algorithm, we use human coders to judge the reconstructability of indoor objects, following a qualitative coding scheme. Human exploration of object shape imperfection was assisted by a visual analytic tool in making their judgement. We found that high point-level accuracy achieved through semantic segmentation of point cloud data does not guarantee high object-level accuracy. The extent of this problem varies widely among different spatial settings and configurations. We discuss the significance of these findings on the choice of 3D reconstruction methods.
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三维点云和室内环境三维模型语义分割算法的缺陷认识
摘要点云数据为室内环境的几何精度和语义丰富的3D模型的自动构建提供了新的潜力。深度学习方法在点云语义分割方面的最新进展表明,用对象类标记三维表面上的点具有令人印象深刻的准确性。然而,由于这些数据的不完善和对象构建算法的不确定,从语义标记的3D点重建语义对象的形状仍然具有挑战性。关于数据缺陷如何影响三维室内物体的重建,我们几乎没有经验知识。本文通过分析基于语义标记的点云对室内物体的可重构性,有助于理解三维点云数据和语义分割算法的缺陷本质。我们的实验使用了斯坦福大尺度三维室内空间数据集(S3DIS)中的181个房间。利用PointNet++分段分割算法在点云上生成语义标签后,采用定性编码方案,利用人工编码器对室内物体的可重构性进行判断。人类对物体形状缺陷的探索在视觉分析工具的帮助下进行判断。我们发现,通过点云数据的语义分割获得的高点级精度并不能保证高对象级精度。这个问题的程度在不同的空间设置和配置中差别很大。我们讨论了这些发现对选择三维重建方法的意义。
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