Abstract

Abstract. PointNet has been widely considered as a popular representation for unstructured point clouds with the aim of classification and segmentation. To date, recent researches represent the limitation of the PointNet to pose estimation and alignment of real environment, due to the low performance in pattern learning to complex scenes. This paper presents an end-to-end deep learning method for point clouds registration of indoor environment. The proposed method involves three steps. Firstly, feature pre-processing extracts the key-points by adaptive Harris 3D algorithm and generate the local group by point grouping. Second, hierarchical feature learning network is trained to describe the local group as feature descriptors. Finally, loss function between feature descriptor is trained. The key contribution is that we innovatively use the key-points to generate multi-layer feature vector, which can provide the contextual local features of the indoor environment. The results shows that our method achieves comparable registration accuracy to the present state-of-art geometric methods in the indoor environment. We comprehensively validate the accuracy of our approach using S3DIS dataset. The high accuracy demonstrates that our method can be used in point clouds registration accurately.

Highlights

  • In recent years, three-dimensional (3D) mapping in indoor environment based on point clouds has received considerable critical attention

  • To evaluate the performance in the indoor environment, we demonstrate the use of proposed method to estimate the transformation in the Area 1 from S3DIS dataset

  • A learned feature registration algorithm with point pre-processing and hierarchical training network is proposed in this paper

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Summary

Introduction

Three-dimensional (3D) mapping in indoor environment based on point clouds has received considerable critical attention It has been an important data source for indoor 3D model and information visualization, which are an integral part of indoor service such as geo-hazard monitoring, urban asset management, and so on (Wang et al, 2019). Traditional methods to obtain the completed and detailed point clouds are mainly implemented by matching the geometric pairs of points and calculating the transformation. Geometric feature, such as ICP (Iterative Closest Point) and its variants, establish the point corresponding and performing a least squares optimization. Developing the registration algorithm with higher feature space that can be used in the 3D mapping is necessary

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