A Review of Enhancement Techniques for Cone Beam Computed Tomography Images

Hassn Mazin Al-alaaf, Mohammed Sabah Jarjees
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Abstract

Cone Beam Computed Tomography (CBCT) has emerged as a valuable imaging modality for various medical applications due to its ability to provide three-dimensional information with minimal radiation exposure. However, CBCT images often suffer from inherent limitations, such as increased noise, artifacts, and reduced spatial resolution. This paper presents a comprehensive review of image processing techniques employed to enhance the quality of CBCT images, addressing the challenges posed by acquisition hardware and image reconstruction algorithms. The review covers a range of preprocessing and post-processing methods, including denoising, artifact correction, and resolution improvement techniques. These methods encompass various mathematical algorithms, machine learning approaches, and hybrid models, which aim to mitigate the imperfections present in CBCT data while preserving diagnostically relevant information. Additionally, this paper discusses the application of deep learning methods, convolutional neural networks, and generative adversarial networks in CBCT image enhancement. These advanced techniques have shown promise in tackling the complex nature of CBCT data and optimizing image quality.
锥形束计算机断层扫描图像增强技术综述
锥形束计算机断层扫描(CBCT)能够以最小的辐射量提供三维信息,因此已成为各种医疗应用的重要成像模式。然而,CBCT 图像往往存在固有的局限性,如噪声增加、伪像和空间分辨率降低。本文全面回顾了为提高 CBCT 图像质量而采用的图像处理技术,探讨了采集硬件和图像重建算法带来的挑战。综述涵盖了一系列预处理和后处理方法,包括去噪、伪影校正和分辨率改进技术。这些方法包括各种数学算法、机器学习方法和混合模型,旨在减轻 CBCT 数据中存在的缺陷,同时保留诊断相关信息。此外,本文还讨论了深度学习方法、卷积神经网络和生成对抗网络在 CBCT 图像增强中的应用。这些先进技术在解决 CBCT 数据的复杂性和优化图像质量方面已显示出良好的前景。
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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