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Flow Network Based Cardiac Motion Tracking Leveraging Learned Feature Matching

机译:利用学习特征匹配的基于流网络的心脏运动跟踪

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We present a novel cardiac motion tracking method where motion is modeled as flow through a network. The motion is subject to physiologically consistent constraints and solved using linear programming. An additional important contribution of our work is the use of a Siamese neural network to generate edge weights that guide the flow through the network. The Siamese network learns to detect and quantify similarity and dissimilarity between pairs of image patches corresponding to the graph nodes. Despite cardiac motion tracking being an inherently spatiotemporal problem, few methods reliably address it as such. Furthermore, many tracking algorithms depend on tedious feature engineering and metric refining. Our approach provides solutions to both of these problems. We benchmark our method against a few other approaches using a synthetic 4D echocardiography dataset and compare the performance of neural network based feature matching with other features. We also present preliminary results on data from 5 canine cases.
机译:我们提出了一种新颖的心脏运动跟踪方法,该方法将运动建模为通过网络的流动。该运动受到生理上一致的约束,并使用线性编程来解决。我们工作的另一个重要贡献是使用暹罗神经网络来生成边缘权重,以指导流过网络的流量。暹罗网络学会检测和量化与图节点相对应的成对图像块之间的相似性和不相似性。尽管心脏运动跟踪是一个固有的时空问题,但很少有方法能够可靠地解决这一问题。此外,许多跟踪算法都依赖乏味的特征工程和度量精炼。我们的方法为这两个问题提供了解决方案。我们使用合成的4D超声心动图数据集将其方法与其他几种方法进行了基准比较,并将基于神经网络的特征匹配与其他特征的性能进行了比较。我们还介绍了来自5个犬类病例的数据的初步结果。

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