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APPLYING NEURAL NETWORKS AND OPTIMIZATION TECHNIQUES TO THE SIMULATION OF HUMAN MOTION

机译:神经网络和优化技术在人体运动仿真中的应用

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Human motion synthesis has been an important multidisciplinary research area across computer animation, biomechanics, orthopedics, rehabilitation, bioengineering, ergonomics, etc. The human motion of daily activity is a complex task of movement coordination involving many body parts and joints. Even to generate the simple motion such as raising the arm or getting up from the chair requires complex modeling and computation. Perceptron types of neural networks were used in this study to generalize the movement coordination of a daily human activity, the lifting motion. With only a limited amount of training data, reasonable patterns of the motion could be achieved by the network. The motion patterns were then fitted with Hermite polynomials and initiated in an optimization model to predict the entire motion trajectories. The paper presents the method combining Neural networks and optimization for the generation of human motion.
机译:人体运动合成一直是跨计算机动画,生物力学,骨科,康复,生物工程,人体工程学等重要的多学科研究领域。人体日常活动是涉及许多身体部位和关节的运动协调的复杂任务。即使产生简单的动作,例如抬起手臂或从椅子上站起来,也需要复杂的建模和计算。本研究中使用神经网络的感知器类型来概括人类日常活动的运动协调,即举升运动。仅使用有限数量的训练数据,网络就可以实现合理的运动模式。然后将运动模式与Hermite多项式拟合,并在优化模型中启动以预测整个运动轨迹。本文提出了一种将神经网络与优化相结合的方法来生成人体运动。

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