Abstract

Abstract. Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have credibility for capturing geometry of objects including shape, size, and orientation. Deep learning (DL) has been recognized as the most successful approach for image semantic segmentation. Applied to point clouds, performance of the many DL algorithms degrades, because point clouds are often sparse and have irregular data format. As a result, point clouds are regularly first transformed into voxel grids or image collections. PointNet was the first promising algorithm that feeds point clouds directly into the DL architecture. Although PointNet achieved remarkable performance on indoor point clouds, its performance has not been extensively studied in large-scale outdoor point clouds. So far, we know, no study on large-scale aerial point clouds investigates the sensitivity of the hyper-parameters used in the PointNet. This paper evaluates PointNet’s performance for semantic segmentation through three large-scale Airborne Laser Scanning (ALS) point clouds of urban environments. Reported results show that PointNet has potential in large-scale outdoor scene semantic segmentation. A remarkable limitation of PointNet is that it does not consider local structure induced by the metric space made by its local neighbors. Experiments exhibit PointNet is expressively sensitive to the hyper-parameters like batch-size, block partition and the number of points in a block. For an ALS dataset, we get significant difference between overall accuracies of 67.5% and 72.8%, for the block sizes of 5m × 5m and 10m × 10m, respectively. Results also discover that the performance of PointNet depends on the selection of input vectors.

Highlights

  • Pointwise classification, known as semantic segmentation is a higher-level task in object recognition: detection, classification and segmentation

  • This paper investigated PointNet, the first developed end-to-end Deep learning (DL) algorithm to directly processes raw point clouds for largescale outdoor environment

  • It performs well for semantic segmentation for the classes with a sufficient number of points, but the results are very poor for the classes with a small number of points, even sometimes unable to label the points in a class of small number of points

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Summary

INTRODUCTION

Known as semantic segmentation is a higher-level task in object recognition: detection, classification and segmentation. The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XLVI-4/W5-2021 The 6th International Conference on Smart City Applications, 27–29 October 2021, Karabuk University, Virtual Safranbolu, Turkey revolutionary approach, PointNet, that directly feeds point clouds into a DL architecture. It has gained remarkable success for objects classification, part segmentation and semantic segmentation of indoor point clouds.

REVISIT POINTNET AND RELATED DL NETS
EXPERIMENTS AND EVALUATION
Sensitivity with batch size
Sensitivity with number of points in a block
Sensitivity with a number of points belong to a class
Sensitivity with the input vectors
Sensitivity with input vectors
Findings
GENERAL DISCUSSION AND CONCLUSIONS
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