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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Automatic Segmentation of a Fetal Echocardiogram Using Modified Active Appearance Models and Sparse Representation
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Automatic Segmentation of a Fetal Echocardiogram Using Modified Active Appearance Models and Sparse Representation

机译:使用修改的主动外观模型和稀疏表示法自动分割胎儿超声心动图

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摘要

A novel approach is presented to automatically segment the left ventricle in fetal echocardiograms. The proposed approach strategically integrates sparse representation, global constraint, and local refinement algorithms into an active appearance model (AAM) framework. In the training stage, we construct an enhanced AAM texture model to deal with the speckle and texture ambiguities. In the segmentation stage, the initial pose is located by a sparse representation method. Globally constrained points and local features with high clinical relevance are effectively incorporated into the AAM framework to make the model converge toward a desired position. Our proposed approach has been compared with the traditional ASM, the traditional AAM, and the globally constrained AAM on the synthetic and clinical data. The results show that compared with experts drawn contours, the overall segmentation accuracy of overlapped area in the synthetic and clinical images are 84.12% and 84.39%, respectively, superior to those of the other three methods. The experiments demonstrate that sparse representative methods greatly facilitate the initializations and our approach is capable of detecting the fetal left ventricle effectively, offering a better segmentation results.
机译:提出了一种新颖的方法来自动分割胎儿超声心动图中的左心室。所提出的方法将稀疏表示,全局约束和局部优化算法策略性地集成到主动外观模型(AAM)框架中。在训练阶段,我们构造一个增强的AAM纹理模型来处理斑点和纹理的歧义。在分割阶段,通过稀疏表示方法定位初始姿势。具有高度临床相关性的全局约束点和局部特征被有效地合并到AAM框架中,以使模型收敛到所需位置。我们在合成和临床数据上将我们提出的方法与传统的ASM,传统的AAM和全球受限的AAM进行了比较。结果表明,与专家绘制的轮廓线相比,合成图像和临床图像中重叠区域的整体分割精度分别为84.12%和84.39%,优于其他三种方法。实验表明,稀疏的代表性方法极大地促进了初始化,并且我们的方法能够有效地检测胎儿左心室,从而提供更好的分割结果。

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