We propose an unsupervised method for 3D geometry-aware representation learning of articulated objects. Though photorealistic images of articulated objects can be rendered with explicit pose control through existing 3D neural representations, these methods require ground truth 3D pose and foreground masks for training, which are expensive to obtain. We obviate this need by learning the representations with GAN training. From random poses and latent vectors, the generator is trained to produce realistic images of articulated objects by adversarial training. To avoid a large computational cost for GAN training, we propose an efficient neural representation for articulated objects based on tri-planes and then present a GAN-based framework for its unsupervised training. Experiments demonstrate the efficiency of our method and show that GAN-based training enables learning of controllable 3D representations without supervision.
翻译:我们建议采用一种不受监督的方法来进行3D几何觉表达式的分解物体学习。虽然通过现有的 3D 神经表现式可以使分解物体的光真化图像具有明确的控制力,但这些方法需要地面真象 3D 姿势和表面面罩用于培训,而培训费用昂贵。我们通过学习GAN 培训来避免了这种需要。从随机成形和潜在矢量中,生成器经过培训,通过对抗性培训来制作真实的分解物体图像。为了避免GAN 培训的计算费用很高,我们建议基于三平面图的分辨式物体的高效神经表现,然后提出一个基于GAN的无监督培训框架。实验显示了我们方法的效率,并表明基于GAN 的培训可以在没有监督的情况下学习可控的 3D 表现式。