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Efficient Collision Detection within Deforming Spherical Sliding Contact

机译:变形球形滑动接触中的有效碰撞检测

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Handling the evolving permanent contact of deformable objects leads to a collision detection problem of high computing cost. Situations in which this type of contact happens are becoming more and more present with the increasing complexity of virtual human models, especially for the emerging medical applications. In this context, we propose a novel collision detection approach to deal with situations in which soft structures are in constant but dynamic contact, which is typical of 3D biological elements. Our method proceeds in two stages: first, in a preprocessing stage, a mesh is chosen under certain conditions as a reference mesh and is spherically sampled. In the collision detection stage, the resulting table is exploited for each vertex of the other mesh to obtain, in constant time, its signed distance to the fixed mesh. The two working hypotheses for this approach to succeed are typical of the deforming anatomical systems we target. First, the two meshes retain a layered configuration with respect to a central point and, second, the fixed mesh tangential deformation is bounded by the spherical sampling resolution. Within this context, the proposed approach can handle large relative displacements, reorientations, and deformations of the mobile mesh. We illustrate our method in comparison with other techniques on a biomechanical model of the human hip joint
机译:处理可变形物体的不断发展的永久接触会导致计算成本高的碰撞检测问题。随着虚拟人体模型的复杂性越来越高,尤其是对于新兴的医疗应用,发生这种类型的接触的情况越来越多。在这种情况下,我们提出了一种新颖的碰撞检测方法,以处理软结构处于恒定但动态接触的情况,这是3D生物元素的典型特征。我们的方法分两个阶段进行:首先,在预处理阶段,在某些条件下选择一个网格作为参考网格并进行球形采样。在碰撞检测阶段,将结果表用于其他网格的每个顶点,以在恒定时间内获得其到固定网格的有符号距离。该方法成功的两个可行假设是我们针对的变形解剖系统的典型特征。首先,两个网格相对于中心点保持分层配置,第二,固定的网格切向变形由球形采样分辨率限制。在这种情况下,建议的方法可以处理移动网格的较大相对位移,重新定向和变形。我们在人体髋关节的生物力学模型上与其他技术进行了比较说明

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