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A robust registration method for real-time ultrasound image fusion with pre-acquired 3D dataset

机译:一种与预先获取的3D数据集进行实时超声图像融合的鲁棒配准方法

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In recent years real-time ultrasound (US) image fusion with pre-acquired 3D dataset has become widely used in both diagnosis and image-guided interventions. The accuracy of a US image fusion system heavily depends on the image registration method. However, the registration procedure of this application is inevitably interfered by possible outliers in the corresponding point pairs. This is either caused by image feature difference between two modalities or by tissue shifting and deformation of patient body between two imaging studies. While traditional methods often ignore the position error of registration points, we present a random sample consensus-based algorithm to reduce the impact of outliers and improve the robustness. To evaluate our algorithm, a simulation study is carried out, and the new method is compared with state-of-the-art, least square (LS) method. It is shown that our new method is comparable with LS method under non-outlier condition, but it performs significantly better when outliers exist.
机译:近年来,实时超声(US)图像与预先获取的3D数据集的融合已广泛用于诊断和图像指导的干预措施中。美国图像融合系统的准确性在很大程度上取决于图像配准方法。但是,该申请的注册程序不可避免地受到相应点对中可能存在的异常值的干扰。这可能是由于两种模式之间的图像特征差异所致,或者是由于两次成像研究之间的组织移位和患者身体变形所致。传统方法通常会忽略注册点的位置误差,但我们提出了一种基于共识的随机样本算法,以减少离群值的影响并提高鲁棒性。为了评估我们的算法,进行了仿真研究,并将新方法与最新的最小二乘(LS)方法进行了比较。结果表明,我们的新方法在非离群条件下可以与LS方法相提并论,但是当存在离群值时,它的性能要好得多。

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