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Spatio-temporal Image Tracking Based on Optical Flow and Clustering: An Endoneurosonographic Application

机译:基于光流和聚类的时空图像跟踪:神经内镜应用

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On the process of render brain tumors from endoneurosonog-raphy, one of the most important steps consists in track the axis line of an ultrasound probe throughout successive endoscopic images. Recognizing of this line is important because it allows computing its 3D coordinates using the projection matrix of the endoscopic cameras. In this paper we present a method to track an ultrasound probe in successive endoscopic images without relying on any external tracking system. The probe is tracked using a spatio-temporal technique based on optical flow and clustering algorithm. Firstly, we compute the optical flow using the Horn-Schunck algorithm. Secondly, a feature space using the optical flow magnitude and luminance is defined. Thirdly, feature space is partitioned in two regions using the k-means clustering algorithm. After this, we calculate the axis line of the ultrasound probe using Principal Component Analysis (PCA) over segmented region. Finally, a motion restriction is defined over consecutive frames in order to avoid tracking errors. We have used endoscopic images from brain phantoms to evaluate the performance of the proposed method, we compare our methodology against ground truth and a based-color particle filter, and our results show that it is robust and accurate.
机译:在神经内镜下使脑部肿瘤渲染的过程中,最重要的步骤之一是在整个连续的内窥镜图像中跟踪超声探头的轴线。识别这条线很重要,因为它允许使用内窥镜摄像机的投影矩阵计算其3D坐标。在本文中,我们提出了一种在不依赖任何外部跟踪系统的情况下,在连续的内窥镜图像中跟踪超声探头的方法。使用基于光流和聚类算法的时空技术跟踪探针。首先,我们使用Horn-Schunck算法计算光流。其次,定义使用光流大小和亮度的特征空间。第三,使用k-means聚类算法将特征空间划分为两个区域。此后,我们使用主成分分析(PCA)在分段区域上计算超声探头的轴线。最后,在连续帧上定义运动限制,以避免跟踪错误。我们已经使用来自脑部幻影的内窥镜图像来评估所提出方法的性能,我们将我们的方法与地面真实情况和基于彩色滤色镜的方法进行了比较,结果表明该方法是鲁棒且准确的。

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