使用结构光三角测量和深度学习重建的低成本3D口腔内扫描仪的设计和验证。

IF 4.8 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Ahmed M M Awad, Ahmed Badway, Lamiaa ElFadaly
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引用次数: 0

摘要

问题说明:口内扫描仪(ios)通过实现精确、高分辨率的数字扫描,改变了修复工作流程。然而,它们的高成本和硬件复杂性限制了在资源受限环境中的采用。目的:本研究的目的是使用结构光三角测量和深度学习重建设计和验证一个轻量级的、具有成本效益的IOS原型硬件,并将其性能与流行的商用IOS (TRIOS 3)进行比较。材料和方法:开发了一个手持式原型IOS硬件,集成了互补金属氧化物半导体(CMOS)相机(1280×720 px)和白光和红激光投影仪。内外标采用张氏法;特征提取使用Canny和尺度不变特征变换(SIFT)、运动结构(SfM)和主动三角剖分在摄影测量软件程序中生成点云。YOLO‑v8风格的网络进行牙齿分割,然后是全卷积网络(FCN)编码器-解码器进行深度细化。扫描石膏模型(307帧),输出的31.1万个初始网格点与TRIOS 3(10.2万个网格点)进行比较。结果:原型扫描仪硬件的平均±标准差重投影误差为0.30±0.15 px(范围为0.05 ~ 1.8 px),在商业公差(0.2 ~ 0.4 px)范围内。地标计数平均每帧4000±1200个特征。经过网格过滤,保留了27万个高质量的顶点。深度学习后处理减少了大约20%的表面伪影(定性)。结论:低成本IOS的点云密度比市售IOS高3倍,同时保持相当的准确性,证明了其在可负担得起的数字假肢工作流程中的潜力。计划未来的体内验证以确定临床适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and validation of a low‑cost 3D intraoral scanner using structured‑light triangulation and deep‑learning reconstruction.

Statement of problem: Intraoral scanners (IOSs) have transformed prosthodontic workflows by enabling precise, high-resolution digital scans. However, their high cost and hardware complexity limit adoption in resource-constrained settings.

Purpose: The aim of this study was to design and validate a lightweight, cost-effective IOS prototype hardware using structured-light triangulation and deep-learning reconstruction and to compare its performance with a popular commercially available IOS (TRIOS 3).

Material and methods: A handheld prototype IOS hardware integrating a complementary metal-oxide-semiconductor (CMOS) camera (1280×720 px) with both white‑light and red‑laser projectors was developed. Intrinsic and extrinsic calibration used the Zhang method; feature extraction used Canny and scale-invariant feature transform (SIFT), structure‑from‑motion (SfM), and active triangulation generated point clouds in a photogrammetry software program. A YOLO‑V8-style network performed tooth segmentation, followed by a fully convolutional network (FCN) encoder-decoder for depth refinement. A gypsum cast was scanned (307 frames), and the 311 000 initial mesh points outputted were compared against the TRIOS 3 (102 000 points).

Results: The mean ±standard deviation reprojection error of the prototype scanner hardware was 0.30 ±0.15 px (range 0.05 to 1.8 px), within commercial tolerances (0.2 to 0.4 px). The landmark count averaged 4000 ±1200 features per frame. After mesh filtering, 270 000 high‑quality vertices remained. Deep‑learning postprocessing reduced surface artifacts by approximately 20% (qualitative).

Conclusions: The low‑cost IOS achieved point‑cloud densities 3 times higher than the commercially available IOS while maintaining comparable accuracy, demonstrating its potential in affordable digital prosthetic workflows. Future in vivo validation is planned to determine clinical applicability.

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来源期刊
Journal of Prosthetic Dentistry
Journal of Prosthetic Dentistry 医学-牙科与口腔外科
CiteScore
7.00
自引率
13.00%
发文量
599
审稿时长
69 days
期刊介绍: The Journal of Prosthetic Dentistry is the leading professional journal devoted exclusively to prosthetic and restorative dentistry. The Journal is the official publication for 24 leading U.S. international prosthodontic organizations. The monthly publication features timely, original peer-reviewed articles on the newest techniques, dental materials, and research findings. The Journal serves prosthodontists and dentists in advanced practice, and features color photos that illustrate many step-by-step procedures. The Journal of Prosthetic Dentistry is included in Index Medicus and CINAHL.
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