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A Hybrid ASM Approach for Sparse Volumetric Data Segmentation

机译:稀疏体数据分割的混合ASM方法

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摘要

Three-Dimensional (3D) Active Shape Modeling (ASM) is a straightforward extension of 2D ASM. 3D ASM is robust when true volumetric data is considered. However, when the information in one dimension is sparse, the pure 3D ASM tends to fail. We present a hybrid 2D + 3D methodology which can deal with sparse 3D data. 2D and 3D ASMs are combined to obtain a “global optimal” segmentation of the 3D object embedded in the data set, rather than the “locally optimal” segmentation on separate slices. Experimental results indicate that the developed approach shows equivalent precision on separate slices but higher consistency for whole volumes when compared to 2D ASM, while the results for whole volumes are improved when compared to the pure 3D ASM approach.
机译:三维(3D)活动形状建模(ASM)是2D ASM的直接扩展。当考虑真实的体积数据时,3D ASM是可靠的。但是,当一维信息稀疏时,纯3D ASM往往会失败。我们提出了可以处理稀疏3D数据的2D + 3D混合方法。将2D和3D ASM组合起来,以获得嵌入在数据集中的3D对象的“全局最佳”分割,而不是在单独的切片上进行“局部最佳”分割。实验结果表明,与2D ASM相比,改进的方法在单独的切片上显示出相同的精度,但在整个体积上具有更高的一致性,而与纯3D ASM方法相比,整个体积的结果得到了改善。

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