Extracting Valley-Ridge Lines from Point-Cloud-Based 3D Fingerprint Models
计算机科学
点云
山脊
指纹(计算)
人工智能
指纹识别
计算机视觉
点(几何)
作者
Xufang Pang,Zhan Song,Wuyuan Xie
出处
期刊:IEEE Computer Graphics and Applications [Institute of Electrical and Electronics Engineers] 日期:2013-07-01卷期号:33 (4): 73-81被引量:9
标识
DOI:10.1109/mcg.2012.128
摘要
3D fingerprinting is an emerging technology with the distinct advantage of touchless operation. More important, 3D fingerprint models contain more biometric information than traditional 2D fingerprint images. However, current approaches to fingerprint feature detection usually must transform the 3D models to a 2D space through unwrapping or other methods, which might introduce distortions. A new approach directly extracts valley-ridge features from point-cloud-based 3D fingerprint models. It first applies the moving least-squares method to fit a local paraboloid surface and represent the local point cloud area. It then computes the local surface's curvatures and curvature tensors to facilitate detection of the potential valley and ridge points. The approach projects those points to the most likely valley-ridge lines, using statistical means such as covariance analysis and cross correlation. To finally extract the valley-ridge lines, it grows the polylines that approximate the projected feature points and removes the perturbations between the sampled points. Experiments with different 3D fingerprint models demonstrate this approach's feasibility and performance.