1. Learning-Based Hole Detection in 3D Point Cloud Towards Hole Filling
- Author
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Swathi Tegginkeri, Chaitra Desai, Kiran Gani, Ramesh Ashok Tabib, Ujwala Patil, Uma Mudenagudi, and Yashaswini V. Jadhav
- Subjects
Surface (mathematics) ,Computer science ,business.industry ,Deep learning ,Point cloud ,Boundary (topology) ,020206 networking & telecommunications ,02 engineering and technology ,Set (abstract data type) ,0202 electrical engineering, electronic engineering, information engineering ,General Earth and Planetary Sciences ,020201 artificial intelligence & image processing ,Point (geometry) ,Artificial intelligence ,business ,Algorithm ,Astrophysics::Galaxy Astrophysics ,Surface reconstruction ,ComputingMethodologies_COMPUTERGRAPHICS ,General Environmental Science ,Interpolation ,Geometric data analysis - Abstract
In this paper, we propose a learning-based approach for automatic detection of hole boundary points in a 3D point cloud. Point cloud is an important geometric data structure used in 3D modelling. Data obtained from automatic acquisition techniques often result in geometric deficiencies such as holes in the 3D point cloud. For successful hole-filling to achieve better surface reconstruction, accurate detection of hole boundary points in the point cloud is necessary. Most of the existing methods use threshold values for different parameters which need to be set manually after analyzing the nature of point cloud. It becomes difficult to generalize the threshold values for a wide variety of point clouds. To overcome this limitation, we propose a deep learning framework to detect holes in the point cloud. The architecture directly consumes point cloud and considers the permutation invariance of points. Each point in the point cloud is classified as a hole boundary point or not. The detected hole boundary points are used for hole filling by fitting a surface and interpolating points on the surface.
- Published
- 2020
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