首页> 外文期刊>Journal of medical systems >A New Method for 3D Thinning of Hybrid Shaped Porous Media Using Artificial Intelligence. Application to Trabecular Bone.
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A New Method for 3D Thinning of Hybrid Shaped Porous Media Using Artificial Intelligence. Application to Trabecular Bone.

机译:利用人工智能技术对混合成形多孔介质进行3D稀疏的新方法。在小梁骨中的应用。

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摘要

Curve and surface thinning are widely-used skeletonization techniques for modeling objects in three dimensions. In the case of disordered porous media analysis, however, neither is really efficient since the internal geometry of the object is usually composed of both rod and plate shapes. This paper presents an alternative to compute a hybrid shape-dependant skeleton and its application to porous media. The resulting skeleton combines 2D surfaces and 1D curves to represent respectively the plate-shaped and rod-shaped parts of the object. For this purpose, a new technique based on neural networks is proposed: cascade combinations of complex wavelet transform (CWT) and complex-valued artificial neural network (CVANN). The ability of the skeleton to characterize hybrid shaped porous media is demonstrated on a trabecular bone sample. Results show that the proposed method achieves high accuracy rates about 99.78%-99.97%. Especially, CWT (2nd level)-CVANN structure converges to optimum results as high accuracy rate-minimum time consumption.
机译:曲线和表面细化是广泛使用的骨架化技术,用于在三个维度上建模对象。但是,在无序多孔介质分析的情况下,这两种方法都不是真正有效的方法,因为对象的内部几何形状通常由棒形和板形组成。本文提出了一种计算混合形状相关骨架的替代方法,并将其应用于多孔介质。生成的骨骼结合了2D表面和1D曲线,分别代表对象的板状和杆状部分。为此,提出了一种基于神经网络的新技术:复小波变换(CWT)和复值人工神经网络(CVANN)的级联组合。在小梁骨样品上证明了骨架表征混合形状多孔介质的能力。结果表明,该方法达到了约99.78%-99.97%的高准确率。特别是,CWT(第二级)-CVANN结构收敛为最佳结果,因为它具有较高的准确率-最小的时间消耗。

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