We present a novel retargeting algorithm that transfers the musculature of a reference anatomical model to new bodies with different sizes, body proportions, muscle capability, and joint range of motion while preserving the functionality of the original musculature as closely as possible. The geometric configuration and physiological parameters of musculotendon units are estimated and optimized to adapt to new bodies. The range of motion around joints is estimated from a motion capture dataset and edited further for individual models. The retargeted model is simulation-ready, so we can physically simulate muscle-actuated motor skills with the model. Our system is capable of generating a wide variety of anatomical bodies that can be simulated to walk, run, jump and dance while maintaining balance under gravity. We will also demonstrate the construction of individualized musculoskeletal models from bi-planar X-ray images and medical examinations.
翻译:我们提出了一个新颖的重新定位算法,将参考解剖模型的肌肉变形转移到大小、身体比例、肌肉能力以及联合运动范围各异的新体,同时尽可能密切地保持原始肌肉的功能。Musculotendon单元的几何配置和生理参数得到估计和优化,以适应新的身体。连接周围的运动范围从运动捕获数据集中估算,并为个体模型进一步编辑。再定向模型是模拟准备就绪的,因此我们可以用模型来物理模拟肌肉活性运动技能。我们的系统能够产生各种可以模拟走路、跑步、跳跃和跳舞的解剖体,同时在重力下保持平衡。我们还将从双平面X射线图像和医学检查中演示个体化的肌肉骨骼模型的构造。