On 2D-3D Image Feature Detections for Image-To-Geometry Registration in Virtual Dental Model

Hui-jun Tang, R. T. Hsung, W. Y. Lam, Leo Y. Y. Cheng, E. Pow
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引用次数: 1

Abstract

3D digital smile design (DSD) gains great interest in dentistry because it enables esthetic design of teeth and gum. However, the color texture of teeth and gum is often lost/distorted in the digitization process. Recently, the image-to-geometry registration shade mapping (IGRSM) method was proposed for registering color texture from 2D photography to 3D mesh model. It allows better control of illumination and color calibration for automatic teeth shade matching. In this paper, we investigate automated techniques to find the correspondences between 3D tooth model and color intraoral photographs for accurately perform the IGRSM. We propose to use the tooth cusp tips as the correspondence points for the IGR because they can be reliably detected both in 2D photography and 3D surface scan. A modified gradient descent method with directional priority (GDDP) and region growing are developed to find the 3D correspondence points. For the 2D image, the tooth tips contour lines are extracted based on luminosity and chromaticity, the contour peaks are then detected as the correspondence points. From the experimental results, the proposed method shows excellent accuracy in detecting the correspondence points between 2D photography and 3D tooth model. The average registration error is less than 15 pixels for 4752×3168 size intraoral image.
虚拟牙齿模型图像-几何配准中2D-3D图像特征检测研究
三维数字微笑设计(DSD)因其能够实现牙齿和牙龈的美学设计而引起了牙科界的极大兴趣。然而,在数字化的过程中,牙齿和牙龈的颜色纹理往往会丢失/扭曲。近年来,提出了一种图像-几何配准阴影映射(IGRSM)方法,用于将二维摄影图像中的彩色纹理配准到三维网格模型中。它可以更好地控制照明和颜色校准,以实现自动牙齿阴影匹配。在本文中,我们研究了自动化技术,以找到三维牙齿模型和彩色口腔内照片之间的对应关系,以准确地执行IGRSM。我们建议使用牙尖尖端作为IGR的对应点,因为它们可以在2D摄影和3D表面扫描中可靠地检测到。提出了一种改进的梯度下降法,结合方向优先度和区域生长来寻找三维对应点。对于二维图像,基于亮度和色度提取齿尖轮廓线,检测轮廓峰作为对应点。实验结果表明,该方法在检测二维图像与三维牙齿模型对应点方面具有良好的准确性。对于4752×3168大小的口腔内图像,平均配准误差小于15像素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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