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Compressed Sensing Based Image Restoration Algorithm with Prior Information: Software and Hardware Implementations for Image-Guided Therapy.

机译:具有先验信息的基于压缩感知的图像恢复算法:图像指导治疗的软件和硬件实现。

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摘要

Based on the compressed sensing theorem, we present the integrated software and hardware platform for developing a total-variation based image restoration algorithm by applying prior image information and free-form deformation fields for image guided therapy. The core algorithm we developed solves the image restoration problem for handling missing structures in one image set with prior information, and it enhances the quality of the image and the anatomical information of the volume of the on-board computed tomographic (CT) with limited-angle projections. Through the use of the algorithm, prior anatomical CT scans were used to provide additional information to help reduce radiation doses associated with the improved quality of the image volume produced by on-board Cone-Beam CT, thus reducing the total radiation doses that patients receive and removing distortion artifacts in 3D Digital Tomosynthesis (DTS) and 4D-DTS. The proposed restoration algorithm enables the enhanced resolution of temporal image and provides more anatomical information than conventional reconstructed images.;The performance of the algorithm was determined and evaluated by two built-in parameters in the algorithm, i.e., B-spline resolution and the regularization factor. These parameters can be adjusted to meet different requirements in different imaging applications. Adjustments also can determine the flexibility and accuracy during the restoration of images. Preliminary results have been generated to evaluate the image similarity and deformation effect for phantoms and real patient's case using shifting deformation window. We incorporated a graphics processing unit (GPU) and visualization interface into the calculation platform, as the acceleration tools for medical image processing and analysis. By combining the imaging algorithm with a GPU implementation, we can make the restoration calculation within a reasonable time to enable real-time on-board visualization, and the platform potentially can be applied to solve complicated, clinical-imaging algorithms.
机译:基于压缩感知定理,我们提出了一种集成的软件和硬件平台,用于通过应用先验图像信息和自由形式的变形场来进行基于图像的指导治疗,从而开发基于全变异的图像恢复算法。我们开发的核心算法通过先验信息解决了在一个图像集中处理缺失结构的图像恢复问题,并且在有限的条件下提高了图像质量和机载计算机断层扫描(CT)体积的解剖信息。角度投影。通过使用该算法,先前的解剖CT扫描被用于提供其他信息,以帮助减少与机载锥形束CT产生的图像体积质量改善相关的辐射剂量,从而减少患者接受的总辐射剂量并消除3D数字断层合成(DTS)和4D-DTS中的失真伪影。与传统的重建图像相比,所提出的恢复算法能够提高时间图像的分辨率,并提供更多的解剖信息。;算法的性能由算法中的两个内置参数B样条分辨率和正则化确定和评估因子。可以调整这些参数以满足不同成像应用中的不同要求。调整还可以确定图像恢复期间的灵活性和准确性。已经产生了初步结果,用于通过移动变形窗来评估体模和真实患者的图像的图像相似性和变形效果。我们将图形处理单元(GPU)和可视化界面集成到计算平台中,作为用于医学图像处理和分析的加速工具。通过将成像算法与GPU实施相结合,我们可以在合理的时间内进行恢复计算,以实现实时车载可视化,并且该平台有可能被用于解决复杂的临床成像算法。

著录项

  • 作者

    Jian, Yuchuan.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Engineering Electronics and Electrical.;Health Sciences Radiology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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