论文标题
预测看不见的3D对象的物理动力学
Predicting the Physical Dynamics of Unseen 3D Objects
论文作者
论文摘要
可以预测物理相互作用对以前看不见的对象实例动态的影响的机器对于创建更好的机器人和交互式虚拟世界很重要。在这项工作中,我们专注于预测刚刚受到冲动力的平面上3D对象的动力学。特别是,我们预测状态-3D位置,旋转,速度和稳定性的变化。与以前的工作不同,我们的方法可以将动态预测推广到训练过程中未见的对象形状和初始条件。我们的方法将3D对象的形状作为点云,其初始线性和角速度作为输入。我们提取形状特征,并使用复发性神经网络来预测每个时间步骤的状态的全部变化。我们的模型可以通过物理引擎或现实世界的数据来支持培训。实验表明,我们可以准确预测看不见的对象几何和初始条件的状态变化。
Machines that can predict the effect of physical interactions on the dynamics of previously unseen object instances are important for creating better robots and interactive virtual worlds. In this work, we focus on predicting the dynamics of 3D objects on a plane that have just been subjected to an impulsive force. In particular, we predict the changes in state - 3D position, rotation, velocities, and stability. Different from previous work, our approach can generalize dynamics predictions to object shapes and initial conditions that were unseen during training. Our method takes the 3D object's shape as a point cloud and its initial linear and angular velocities as input. We extract shape features and use a recurrent neural network to predict the full change in state at each time step. Our model can support training with data from both a physics engine or the real world. Experiments show that we can accurately predict the changes in state for unseen object geometries and initial conditions.