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Keypoint Transfer Segmentation

机译:关键点转移细分

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We present an image segmentation method that transfers label maps of entire organs from the training images to the novel image to be segmented. The transfer is based on sparse correspondences between keypoints that represent automatically identified distinctive image locations. Our segmentation algorithm consists of three steps: (ⅰ) keypoint matching, (ⅱ) voting-based keypoint labeling, and (ⅲ) keypoint-based probabilistic transfer of organ label maps. We introduce generative models for the inference of keypoint labels and for image segmentation, where keypoint matches are treated as a latent random variable and are marginalized out as part of the algorithm. We report segmentation results for abdominal organs in whole-body CT and in contrast-enhanced CT images. The accuracy of our method compares favorably to common multi-atlas segmentation while offering a speed-up of about three orders of magnitude. Furthermore, keypoint transfer requires no training phase or registration to an atlas. The algorithm's robustness enables the segmentation of scans with highly variable field-of-view.
机译:我们提出了一种图像分割方法,该方法将整个器官的标签图从训练图像传输到要分割的新型图像。传输基于代表自动识别的独特图像位置的关键点之间的稀疏对应。我们的分割算法包括三个步骤:(ⅰ)关键点匹配,(ⅱ)基于投票的关键点标记和(ⅲ)基于关键点的器官标签图的概率传递。我们为关键点标签的推断和图像分割引入了生成模型,其中关键点匹配被视为潜在的随机变量,并被边缘化为算法的一部分。我们报告了全身CT和对比增强CT图像中腹部器官的分割结果。我们的方法的准确性优于常见的多图集分割,同时提供了大约三个数量级的加速。此外,关键点转移不需要任何培训阶段或注册任何地图集。该算法的鲁棒性使得可以对视野高度可变的扫描进行分割。

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