Method of identifying sharp geometric edge points based on normal consistency

A recognition method and consistent technology, applied in character and pattern recognition, image data processing, instruments, etc., can solve the problem of noise sensitivity and difficult to identify less obvious geometric edges, and achieve strong sensitivity, wide adaptability, strong The effect of robustness

Active Publication Date: 2017-10-20
HOHAI UNIV
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Problems solved by technology

[0005] The existing edge point recognition methods (belonging to the second category) based on normal mutations and curvature maximums are all sensitive to noise, and a large noise point may cause adjacent points to be misidentified as edge points; The sensitivity to noise also makes it difficult for these methods to identify less obvious geometric edges, such as geometric edges formed by two intersecting surfaces with an angle close to 180°

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  • Method of identifying sharp geometric edge points based on normal consistency
  • Method of identifying sharp geometric edge points based on normal consistency
  • Method of identifying sharp geometric edge points based on normal consistency

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Embodiment Construction

[0039] The method for identifying sharp geometric edge points using normal consistency of the present invention, given a point cloud, the identification method includes the following steps:

[0040] S1, calculate the normal direction of each point q, this step S1 includes:

[0041] S1.1, the neighboring points of the search point q form the neighboring point set For a point q, the search is centered at q and radius r 1 All points within the spherical range of , constitute the neighborhood point set of point q Such as figure 1 Indicated by the enlarged dot in black;

[0042] S1.2, according to The normal vector of point q is estimated for all points in the point cloud, and the normal vector of all points in the point cloud is solved in this way. For each point in the point cloud, its normal vector is calculated according to this method, assuming contains k1 points, adopts the method of plane fitting to calculate the normal direction: as figure 1 shown, yes The poin...

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Abstract

The invention discloses a method of identifying sharp geometric edge points in 3D point cloud based on normal consistency. The method is specifically implemented according to the following steps: calculating the normal direction and normal consistency of each point in 3D point cloud; looking for local extreme points with normal consistency in the neighborhood range of each point; judging whether there is a sharp edge nearby according to the number of local extreme points in the neighborhood range, and if there is a sharp edge, further classifying all the points in the neighborhood range according to the normal distribution, and finally judging whether each point is a sharp edge point according to whether the neighborhood center point is on the classification edge; and using the method above to locate all sharp edge points in the point cloud. The edge point detection method of the invention can adapt to any change of edge shape. No model assumption is needed for the intersecting surfaces forming a sharp edge. Straight and curved edges as well as corners formed by intersecting surfaces can be detected. Moreover, all kinds of sharp geometric edges can be identified from 3D point cloud.

Description

technical field [0001] The invention relates to a sharp geometric edge point recognition method utilizing normal direction consistency, and belongs to the field of three-dimensional point cloud data processing. Background technique [0002] Three-dimensional laser scanning is a three-dimensional space imaging technology that has developed rapidly in recent years. It uses a two-axis servo motor to drive a laser rangefinder to continuously sample the target surface of the scanning scene at equal intervals, and output a three-dimensional image that is completely consistent with the geometry of the three-dimensional scene. point cloud. This technology is being more and more widely used in surveying and mapping, archaeology, machining and manufacturing, three-dimensional printing, robotics, unmanned driving and other fields. [0003] Geometric edge points refer to those points distributed near sharp geometric edges in the 3D point cloud. Geometric edges can not only clearly out...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/521G06K9/46G06K9/62
CPCG06T7/521G06T2207/10028G06V10/44G06F18/2135
Inventor 李嘉邓辉蓝秋萍李子宽
Owner HOHAI UNIV
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