口腔内数字视频实时互动修复系统(使用任何段模型)。

IF 2.9 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES DIGITAL HEALTH Pub Date : 2024-08-05 eCollection Date: 2024-01-01 DOI:10.1177/20552076241269536
Yongjia Wu, Li Zeng, Yaya Hong, Xiaojun Li, Xuepeng Chen
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引用次数: 0

摘要

目的:口腔内环境条件差往往导致照片和视频质量低劣,妨碍进一步的临床诊断。为了还原这些数字记录,本研究提出了一种使用segment anything模型的实时交互式还原系统:方法:通过口内摄像头从视频实验室数据集中获取口内数字视频,作为交互式修复系统的输入。初始阶段采用交互式分割模块,利用任意分割模型。随后,设计了实时帧内修复模块和视频增强模块。为了说明交互式修复系统设计的优越性,我们系统地进行了一系列消融研究。我们的量化评估标准包括修复质量、分割准确性和处理速度。此外,专家们还对处理后视频的临床适用性进行了评估:广泛的实验证明了该系统在分割方面的性能,其平均相交-重合率为 0.977。在视频修复方面,它的峰值信噪比为 37.09,结构相似性指数为 0.961,表现可靠。更多可视化结果见 https://yogurtsam.github.io/iveproject 页面:交互式修复系统展示了其为患者和牙医提供可靠、可控的口内视频修复服务的潜力。
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A real-time interactive restoration system for intraoral digital videos using segment anything model.

Objective: Poor conditions in the intraoral environment often lead to low-quality photos and videos, hindering further clinical diagnosis. To restore these digital records, this study proposes a real-time interactive restoration system using segment anything model.

Methods: Intraoral digital videos, obtained from the vident-lab dataset through an intraoral camera, serve as the input for interactive restoration system. The initial phase employs an interactive segmentation module leveraging segment anything model. Subsequently, a real-time intraframe restoration module and a video enhancement module were designed. A series of ablation studies were systematically conducted to illustrate the superior design of interactive restoration system. Our quantitative evaluation criteria contain restoration quality, segmentation accuracy, and processing speed. Furthermore, the clinical applicability of the processed videos was evaluated by experts.

Results: Extensive experiments demonstrated its performance on segmentation with a mean intersection-over-union of 0.977. On video restoration, it leads to reliable performances with peak signal-to-noise ratio of 37.09 and structural similarity index measure of 0.961, respectively. More visualization results are shown on the https://yogurtsam.github.io/iveproject page.

Conclusion: Interactive restoration system demonstrates its potential to serve patients and dentists with reliable and controllable intraoral video restoration.

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来源期刊
DIGITAL HEALTH
DIGITAL HEALTH Multiple-
CiteScore
2.90
自引率
7.70%
发文量
302
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