首页> 外文会议>Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on >Hybrid feature-based Log-Demons registration for tumour tracking in 2-D liver ultrasound images
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Hybrid feature-based Log-Demons registration for tumour tracking in 2-D liver ultrasound images

机译:基于混合特征的Log-Demons注册以在二维肝脏超声图像中跟踪肿瘤

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Traditional intensity-based registration methods are often insufficient for tumour tracking in time-series ultrasound, where the low signal-to-noise ratio significantly degrades the quality of the output images, and topological changes may occur as the anatomical structures slide in and out of the focus plane. To overcome these issues, we propose a hybrid feature-based Log-Demons registration method. The novelty of our approach lies in estimating a hybrid update deformation field from demons forces that carry voxel-based local information and regional spatial correspondences yielded by a block-matching scheme within the diffeomorphic Log-Demons framework. Instead of relying on intensities alone to drive the registration, we use multichannel Log-Demons, with channels representing features like intensity, local phase and phase congruency. Results on clinical data show that our method successfully registers various patient-specific cases, where the tumours are of variable visibility, and in the presence of shadows and topological changes.
机译:传统的基于强度的配准方法通常不足以在时间序列超声中跟踪肿瘤,其中低信噪比会显着降低输出图像的质量,并且随着解剖结构滑入和滑出,拓扑结构可能发生变化。聚焦平面。为了克服这些问题,我们提出了一种基于混合功能的Log-Demons注册方法。我们方法的新颖之处在于,可以从恶魔力估计混合更新变形场,这些恶魔力会携带基于体素的局部信息和由区域变体Log-Demons框架中的块匹配方案产生的区域空间对应关系。我们不仅仅依靠强度来驱动配准,而是使用多通道Log-Demon,这些通道代表强度,局部相位和相位一致性等功能。临床数据结果表明,我们的方法成功注册了各种患者特定的病例,其中肿瘤的可见度可变,并且存在阴影和拓扑变化。

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