Unsupervised segmentation method for terracotta army point clouds based on combination of region growing and deep learning
A deep learning and region growing technology, applied in the field of computer vision, can solve problems such as low efficiency in repairing terracotta warriors and horses
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[0030] This embodiment provides an unsupervised segmentation method for point clouds of terracotta warriors and horses based on the combination of region growing and deep learning, which is characterized in that unsupervised semantic segmentation is performed on point cloud data, specifically including:
[0031] (1) Normal vector prediction based on the three-dimensional coordinate data of the point cloud
[0032] Calculate the nearest point for each point p in the point cloud P, and then calculate the value of the surface normal vector according to the nearest point, and judge whether the value of the normal vector is facing the viewpoint, or reverse the normal vector;
[0033] (2) Pre-segment the point cloud based on the normal vector
[0034] First, K-Nearest Neighbors is calculated for the entire point cloud to obtain the K nearest neighbors of each point. Then, a random point is selected as a starting seed and added to the set of available points to start the algorithm. F...
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