標題: 基於混合式模型簡化法的形變模擬
Deformation Simulation Based on Hybrid Model Reduction
作者: 黃証揚
Huang, Cheng-Yang
林文杰
黃世強
Lin, Wen-Chieh
Wong, Sai-Keung
多媒體工程研究所
關鍵字: 形變模擬;物理模擬;模型簡化法;有限元素法;Deformation Simulation;Physical Simulation;Model Reduction;Finite Element Method
公開日期: 2013
摘要: In computer graphics, model reduction method that utilizes a low-dimensional subspace to approximate the original, high-dimensional deformation space can simulate deformation well in force-free conditions. However, when external forces are applied to the simulated objects, obvious differences between low-dimensional simulation and full-coordinate simulation can be observed. Therefore, to improve the simulation accuracy of reduced deformable models when the external forces are applied and to retain its advantage of fast run-time performance, we present a hybrid framework that utilizes bases constructed from forced and force-free deformations. The forced deformations are precomputed from data of full-coordinate simulation by applying external forces to different parts of the deformable object. This problem is formulated as a force sampling problem and solved by space partition and surface sampling. In the run-time stage, if there are external forces, we simulate deformation in the low-dimensional subspace of forced deformations. When the external forces are released, we simulate in another subspace by adopting the modal derivative bases because its computation is automatic and does not need any presimulation. To reduce the artifact in the transition, we linearly blend forced and force-free deformations. Our results show improved accuracy compared to the results of using only the modal derivative bases while the speedup over full-coordinate simulation is still significant.
In computer graphics, model reduction method that utilizes a low-dimensional subspace to approximate the original, high-dimensional deformation space can simulate deformation well in force-free conditions. However, when external forces are applied to the simulated objects, obvious differences between low-dimensional simulation and full-coordinate simulation can be observed. Therefore, to improve the simulation accuracy of reduced deformable models when the external forces are applied and to retain its advantage of fast run-time performance, we present a hybrid framework that utilizes bases constructed from forced and force-free deformations. The forced deformations are precomputed from data of full-coordinate simulation by applying external forces to different parts of the deformable object. This problem is formulated as a force sampling problem and solved by space partition and surface sampling. In the run-time stage, if there are external forces, we simulate deformation in the low-dimensional subspace of forced deformations. When the external forces are released, we simulate in another subspace by adopting the modal derivative bases because its computation is automatic and does not need any presimulation. To reduce the artifact in the transition, we linearly blend forced and force-free deformations. Our results show improved accuracy compared to the results of using only the modal derivative bases while the speedup over full-coordinate simulation is still significant.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT070156624
http://hdl.handle.net/11536/75760
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