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Adaptive segmentation of ultrasound image

机译:超声图像自适应分割

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This article describes a novel approach to the semi-automatic segmentation of ultrasound images. Assisted segmentation is particularly attractive when processing many slices through a 3D data set, and even though fully automatic segmentation would be ideal, this is currently not feasible given the quality of ultrasound images. The algorithm developed in this article is based on the active contour paradigm, with several important modifications. The contour is attracted to boundaries described locally by statistical models: this allows for the fact that the definition of what constitutes a boundary may vary around the boundary's length. The statistical models are trained on-the-fly by observing boundaries accepted by the operator. In this way, operator intervention in a particular slice is sensibly exploited to reduce the need for intervention in subsequent slices. The resulting algorithm provides fast, reliable and verifiable segmentation of in vivo ultrasound images.
机译:本文介绍了一种新型的超声图像半自动分割方法。当通过3D数据集处理许多切片时,辅助分割特别有吸引力,即使全自动分割将是理想选择,但鉴于超声图像的质量,目前这是不可行的。本文开发的算法基于主动轮廓范例,并进行了一些重要的修改。轮廓被统计模型局部描述的边界所吸引:这允许构成边界的定义在边界长度附近可能变化的事实。通过观察操作员接受的边界来实时训练统计模型。以这种方式,对特定切片的操作员干预被合理地利用,以减少对后续切片的干预的需求。所得算法提供了体内超声图像的快速,可靠和可验证的分割。

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