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MaterialCloning: Acquiring Elasticity Parameters from Images for Medical Applications

机译:MaterialCloning:从医学应用中获取图像的弹性参数

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We present a practical approach for automatically estimating the material properties of soft bodies from two sets of images, taken before and after deformation. We reconstruct 3D geometry from the given sets of multiple-view images; we use a coupled simulation-optimization-identification framework to deform one soft body at its original, non-deformed state to match the deformed geometry of the same object in its deformed state. For shape correspondence, we use a distance-based error metric to compare the estimated deformation fields against the actual deformation field from the reconstructed geometry. The optimal set of material parameters is thereby determined by minimizing the error metric function. This method can simultaneously recover the elasticity parameters of multiple types of soft bodies using Finite Element Method-based simulation (of either linear or nonlinear materials undergoing large deformation) and particle-swarm optimization methods. We demonstrate this approach on real-time interaction with virtual organs in patient-specific surgical simulation, using parameters acquired from low-resolution medical images. We also highlight the results on physics-based animation of virtual objects using sketches from an artist's conception.
机译:我们提出了一种实用的方法,可以根据变形前后的两组图像自动估算软体的材料特性。我们从给定的多视图图像集中重建3D几何;我们使用耦合的模拟-优化-识别框架将一个软体在其原始的未变形状态下变形,以使其在变形状态下与同一对象的变形几何形状相匹配。对于形状对应,我们使用基于距离的误差度量来将估计的变形场与来自重构几何体的实际变形场进行比较。因此,通过使误差度量函数最小化来确定最佳的材料参数集。该方法可以使用基于有限元法的模拟(对经历大变形的线性或非线性材料进行模拟)和粒子群优化方法同时恢复多种类型的软体的弹性参数。我们使用从低分辨率医学图像获取的参数,在针对特定患者的手术模拟中演示了这种与虚拟器官的实时交互方法。我们还将重点介绍使用艺术家构想的草图在基于物理的虚拟对象动画上获得的结果。

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