基于形态学骨架变换的牙齿特征提取与匹配

L. C. C. Jani Joseph, Libi B. George, G. U. Shabna, I. Susmi, N. Santhi
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引用次数: 7

摘要

形态学骨架变换(MST)是一种领先的形态学形状表示方法。在MST中,给定的形状表示为该形状中包含的所有最大磁盘的并集。外部骨架点和外部最大磁盘的概念已被用于形状描述和表征目的。口腔生物特征以其稳定性、不变性和唯一性而成为人类重要的生物特征信息。本文采用SIFT算法进行人体识别,并与canny检测算法进行对比分析。该系统主要分为预处理、特征提取、特征匹配和最终识别人六个阶段。然后进行边缘检测,并与数据库图像进行比较。在最后一步,我们使用查询图像和数据库之间的欧几里得距离来比较SIFT和canny算法的检测值。在这里,被检测点与匹配点之间的欧氏距离决定了人类识别算法的准确性。该系统适用于两种类型的牙科图像,即照片和x光片,其中需要两种不同的数据集。所需的数据库包含50张牙科照片和50张牙科x光片图像,因此实验已经对从牙科诊所*和互联网上拍摄的总共100张图像进行了实验。将本文提出的SIFT算法与canny检测算法进行比较,可以得出我们的SIFT算法可以提供更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Teeth feature extraction and matching for human identification using morphological skeleton transform
The morphological skeleton transform (MST) is a leading morphological shape representation scheme. In the MST, a given shape is represented as the union of all the maximal disks contained in the shape. The concept of external skeleton points and external maximal disks has been used for shape description and characterization purposes. Dental biometrics has emerged as vital biometric information of human being due to its stability, invariant nature and uniqueness. The proposed work using SIFT algorithm for human identification and we work with canny detection algorithm for the analysis and comparison with the proposed SIFT algorithm. This system has six main stages as pre-processing, feature extraction, feature matching and finalized recognized person. Then we go for canny edge detection and comparison with database images. At the final step we compare SIFT and canny algorithm detected values using the Euclidian distance between the query image and database. Here the Euclidian distance between detected points and matching points determines the accuracy of the algorithm for human identification. The system is work for both types of dental images i.e. photograph and radiograph in which two different datasets are required. The required database contains 50 images of dental photographs and 50 images of dental radiographs so experimentation has done on total 100 images and that are taken from dental clinic* and internet. While comparing proposed SIFT algorithm with canny detection algorithm we can conclude that our SIFT algorithm can provide more accurate result.
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