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首页> 外文期刊>Computers in Biology and Medicine >Serial slice image segmentation of digital human based on adaptive geometric active contour tracking
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Serial slice image segmentation of digital human based on adaptive geometric active contour tracking

机译:基于自适应几何主动轮廓跟踪的数字人串行切片图像分割

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摘要

Segmentation is one of the crucial problems for the digital human research, as currently digital human datasets are manually segmented by experts with anatomy knowledge. Due to the thin slice thickness of digital human data, the static slices can be regarded as a sequence of temporal deformation of the same slice. This gives light to the method of object contour tracking for the segmentation task for the digital human data. In this paper, we present an adaptive geometric active contour tracking method, based on a feature image of object contour, to segment tissues in digital human data. The feature image is constructed according to the matching degree of object contour points, image variance and gradient, and statistical models of the object and background colors. Utilizing the characteristics of the feature image, the traditional edge-based geometric active contour model is improved to adaptively evolve curve in any direction instead of the single direction. Experimental results demonstrate that the proposed method is robust to automatically handle the topological changes, and is effective for the segmentation of digital human data.
机译:分割是数字人体研究的关键问题之一,因为当前的数字人体数据集是由具有解剖学知识的专家手动分割的。由于数字人类数据的薄片厚度很薄,因此静态切片可以视为同一切片的时间变形序列。这为用于数字人数据的分割任务的对象轮廓跟踪方法提供了启发。在本文中,我们提出了一种基于对象轮廓的特征图像的自适应几何主动轮廓跟踪方法,用于分割数字人体数据中的组织。根据对象轮廓点的匹配程度,图像方差和梯度以及对象和背景颜色的统计模型构造特征图像。利用特征图像的特征,对传统的基于边缘的几何活动轮廓模型进行了改进,可以在任意方向而不是单个方向上自适应地演化曲线。实验结果表明,该方法具有较强的鲁棒性,可以自动处理拓扑变化,并且对于数字人类数据的分割是有效的。

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