Abstract

Skull registration is one of the important steps in craniofacial reconstruction, and its registration accuracy and efficiency have an important impact on the reconstruction results. To solve the problem of low accuracy and efficiency of existing skull registration methods, a hierarchical skull point cloud registration method is proposed in this paper. The whole registration process is divided into a rough registration stage and a fine registration stage. Firstly, feature points are extracted from the pre-processed skull point cloud model, and a local coordinate reference system is established according to the feature points and their neighbor points. The improved spin image is used to construct the local feature descriptor. The feature matching is carried out according to the nearest neighbor algorithm, and the k-means algorithm is used to eliminate the mismatching points to achieve skull rough registration. Then, based on rough registration, we use an improved ICP algorithm to achieve fine registration of the skull. In this process, we use random sampling to reduce the search scale of points and add geometric feature constraints to further eliminate mismatched points. Finally, the whole registration algorithm is applied to the skull point cloud data to verify. The experimental results show that, compared with other methods, the registration effect and efficiency of the proposed method are superior to those of other methods. In order to verify the universality of the method, we also use a common data set for verification. Experiments show that the method is also very effective.

Highlights

  • The identification of the remains of the skull has important applications in the fields of forensic science, anthropology, archaeology, etc

  • Feature points of the skull point cloud are extracted, the local coordinate system is established according to feature points and their neighboring points, and local feature descriptors based on the improved spin image are calculated

  • This paper presents an improved skull registration method based on spin image and Iterative Closest Point (ICP)

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Summary

A Hierarchical Skull Point Cloud Registration Method

This work was supported in part by the National Key Research and Development Program of China under Grant 2017YFB1402103, in part by the National Natural Science Foundation of China under Grant 61731015, Grant 61673319, Grant 61802311, and Grant 61902317, in part by the Shaanxi Province Industrial Innovation Chain Project of China under Grant 2016TZC-G-3-5, in part by the Shaanxi Provincial Natural Science Foundation of China under Grant 2018JM6061 and Grant 2019JQ-166, and in part by the Shaanxi Provincial Key Research and Development Program General Project under Grant 2019SF-272.

INTRODUCTION
ACQUISITION AND PREPROCESSING OF SKULL DATA
FEATURE POINT EXTRACTION
ESTABLISHMENT OF LOCAL COORDINATE SYSTEM
LOCAL FEATURE DESCRIPTOR BASED ON IMPROVED SPIN IMAGE
ROUGH REGISTRATION PROCESS
FINE REGISTRATION OF SKULL
ANALYSIS OF EXPERIMENTAL RESULTS
EXPERIMENTAL RESULTS AND ANALYSIS OF SKULL ROUGH REGISTRATION
CONCLUSION
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