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Coherent Needle Detection in Ultrasound Volumes using 3D Conditional Random Fields

机译:使用3D条件随机场在超声体积中进行相干针检测

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3D ultrasound (US) transducers will improve the quality of image-guided medical interventions if an automated detection of the needle becomes possible. Image-based detection of the needle is challenging due to the presence of other echogenic structures in the acquired data, inconsistent visibility of needle parts and the low quality in US imaging. As the currently applied approaches for needle detection classify each voxel individually, they do not consider the global relations between the voxels. In this work, we introduce coherent needle labeling by using dense conditional random fields over a volume, along with 3D space-frequency features. The proposal includes long-distance dependencies in voxel pairs according to their similarities in the feature space and their spatial distance. This post-processing stage leads to better label assignment of volume voxels and a more compact and coherent segmented region. Our ex-vivo experiments based on measuring the F-1, F-2 and IoU scores show that the performance improves a significant 10-20 % compared with only using the linear SVM as a baseline for voxel classification.
机译:如果可以自动检测针头,那么3D超声(US)换能器将提高图像引导医疗干预的质量。由于在采集的数据中还存在其他回声结构,针头部件的可见性不一致以及US成像质量低下,因此基于图像的针头检测具有挑战性。由于当前应用的针头检测方法分别将每个体素分类,因此它们没有考虑体素之间的全局关系。在这项工作中,我们通过在一个体积上使用密集的条件随机场以及3D空频特征,来介绍相干针头标记。该提议根据体素对在特征空间和空间距离上的相似性,在体素对中包括长距离依赖关系。此后处理阶段可更好地分配体素标签,并形成更紧凑和连贯的分段区域。我们基于测量F-1,F-2和IoU分数的离体实验表明,与仅将线性SVM用作体素分类的基准相比,性能提高了10-20%。

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