We present a fully automated method of integrating intraoral scan (IOS) and dental cone-beam computerized tomography (CBCT) images into one image by complementing each image's weaknesses. Dental CBCT alone may not be able to delineate precise details of the tooth surface due to limited image resolution and various CBCT artifacts, including metal-induced artifacts. IOS is very accurate for the scanning of narrow areas, but it produces cumulative stitching errors during full-arch scanning. The proposed method is intended not only to compensate the low-quality of CBCT-derived tooth surfaces with IOS, but also to correct the cumulative stitching errors of IOS across the entire dental arch. Moreover, the integration provide both gingival structure of IOS and tooth roots of CBCT in one image. The proposed fully automated method consists of four parts; (i) individual tooth segmentation and identification module for IOS data (TSIM-IOS); (ii) individual tooth segmentation and identification module for CBCT data (TSIM-CBCT); (iii) global-to-local tooth registration between IOS and CBCT; and (iv) stitching error correction of full-arch IOS. The experimental results show that the proposed method achieved landmark and surface distance errors of 112.4 $\mu$m and 301.7 $\mu$m, respectively.
翻译:我们提出了一个完全自动化的方法,通过补充每个图像的弱点,将内部扫描(IOS)和牙科锥形波计算机化断层成像(CBCT)图像整合成一个图像。单是牙科CBCT可能无法精确地描述牙表面的精确细节,因为图像分辨率有限,以及各种CBCT人工制品,包括金属诱导的文物。IOS非常精确地用于扫描狭窄区域,但在全面扫描过程中会产生累积缝合错误。拟议方法的目的不仅在于补偿CBCT产生的牙表面与IOS的低质量,而且在于纠正整个牙科大堂的IOS的累积缝合错误。此外,这一集成可能无法提供IOS的金形结构以及CBCT的牙根。拟议的完全自动化方法由四个部分组成;(一) IOS数据的个人牙分解和识别模块(TSIM-IOS);(二) CBCT数据的个人牙分解和识别模块(TSIM-CCT);(三) IOS和IOS系统与CMCT的全程错误,以及SAS的全方位计算结果。</s>