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An Efficient Medical Image Tracking Algorithm Based on Motion Estimation

机译:一种基于运动估计的高效医学图像跟踪算法

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In an ideal radiotherapy procedure, the treatment system would continuously adapt the radiation beam delivery to changes in the tumor position. The development of such a medical image-guided tracking capability is necessary. In this paper, an efficient medical image tracking algorithm based on motion estimation is proposed. The algorithm uses the motion vectors obtained from a set of selected points to calculate the parameters of the tumor motion model. It comprises three steps: the detection of feature points, the computation of correspondences between two sets of features, and the motion parameter estimation. In detail, for a pair of temporally successive pictures, feature points are extracted with the Harris detector firstly. Then, the highest-confidence-first algorithm, which first groups features for which the SAD matching error of a small window around the feature is smallest, is used in the feature matching step. The feature position gains from prediction. At last, the RANSAC parameter estimation is applied. Four random samples that are exacted in the previous step are selected and a candidate motion model is computed from these samples. All input correspondences are compared with this motion model to separate them into an inlier set and the outliers. After this, refined motion parameters are computed with a least-squares approximation on all inliers. This whole process ensures that only the motion model that had the largest number of inliers is returned as result. Experimental results show the proposed algorithm can be successfully provided with the medical image-guided tracking capability.
机译:在理想的放射疗法过程中,治疗系统将连续地调整辐射束输送以改变肿瘤位置。需要开发这种医学图像引导跟踪能力。本文提出了一种基于运动估计的有效医学图像跟踪算法。该算法使用从一组所选点获得的运动矢量来计算肿瘤运动模型的参数。它包括三个步骤:检测特征点,两组特征之间的对应关系以及运动参数估计。详细地,对于一对时间上连续的图片,首先用Harris检测器提取特征点。然后,最高充立的第一算法,该算法是该特征周围的小窗口的SAD匹配误差最小的第一组特征,用于特征匹配步骤。特征位置从预测获得。最后,应用了Ransac参数估计。选择在前一步中的四个随机样本,并从这些样本计算候选运动模型。将所有输入对应关系与此运动模型进行比较,以将它们分成Inlier集和异常值。在此之后,通过所有inliers在最小二乘近似下计算精细的运动参数。整个过程确保只有返回最大数量最大的inliers的运动模型。实验结果表明,所提出的算法可以成功提供医学图像引导跟踪能力。

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