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Journal ArticleDOI

Feature Line Extraction from Point Clouds Based on Geometric Structure of Point Space

Siyong Fu, +1 more
- 01 Jun 2019 - 
- Vol. 10, Iss: 2, pp 1-18
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TLDR
The experimental results show that the proposed feature line extraction method can accurately extract the feature points, with good noise immunity, especially suitable for the massive point cloud model.
Abstract
In order to improve the accuracy and rapidity of feature line extraction from point clouds, the work proposed a feature line extraction method based on geometric structure of point space. Firstly, a spatial grid dynamic division method is designed to locate the feature region of the model. A new feature points detection operator based on the linear intercept ratio is proposed according to the geometric information of points. Then, the feature points are refined by the Laplacian operator. Finally, the refined feature points are connected into the characteristic curve by the improved method of polyline growth. Compared with the feature points detection method based on surface variation (MSSV) or the angle of normal vector (SM-PD), the proposed method has low rate of error recognition with the increased noise intensity. Meanwhile, the computation time is 224.42 ms for the standard Armadillo model, less than 530.23 ms of the MSSV and 350.75 ms of the SM-PD. The experimental results show that the proposed method can accurately extract the feature points, with good noise immunity, especially suitable for the massive point cloud model.

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Citations
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Inverted LSB image steganography using adaptive pattern to improve imperceptibility

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TL;DR: Results show that the edge features and sharp features are effectively extracted, and the method is not affected by the noise, neighborhood scale, or quality of sampling.
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Book ChapterDOI

An improved method for high hiding capacity based on LSB and PVD

TL;DR: In this paper, an improved image steganography method using the concept of least significant bit substitution and pixel value differencing (PVD) was proposed, which improved hiding capacity, avoiding fall off boundary problem (FOBP), and resistance to regular and singular (RS) and pixel difference histogram (PDH) attack.
References
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Journal ArticleDOI

Multi-scale Feature Extraction on Point-Sampled Surfaces

TL;DR: Central to the method is a multi‐scale classification operator that allows feature analysis at multiplescales, using the size of the local neighborhoods as a discrete scale parameter, which significantly improves thereliability of the detection phase and makes the method more robust in the presence of noise.

Feature Extraction From Point Clouds.

TL;DR: A new method to extract feature lines directly from a surface point cloud using the inexpensive computation of a neighbor graph connecting nearby points, which makes the approach ideal as a preprocessing step in mesh generation.
Proceedings ArticleDOI

Robust Smooth Feature Extraction from Point Clouds

TL;DR: This work presents a robust method that identifies sharp features in a point cloud by returning a set of smooth curves aligned along the edges by leveraging the concept of robust moving least squares to locally fit surfaces to potential features.
Journal ArticleDOI

Towards 3D Face Recognition in the Real: A Registration-Free Approach Using Fine-Grained Matching of 3D Keypoint Descriptors

TL;DR: This paper significantly extends the SIFT-like matching framework to mesh data and proposes a novel approach using fine-grained matching of 3D keypoint descriptors, which accounts for the average reconstruction error of probe face descriptors sparsely represented by a large dictionary of gallery descriptors in identification.
Journal ArticleDOI

Multi-scale tensor voting for feature extraction from unstructured point clouds

TL;DR: This paper presents a new method based on the tensor voting theory to extract sharp features from an unstructured point cloud which may contain random noise, outliers and artifacts and demonstrates the strength of the proposed method in terms of efficiency and robustness by comparing it with other feature detection algorithms.