We propose an unsupervised method for 3D geometry-aware representation learning of articulated objects, in which no image-pose pairs or foreground masks are used for training. 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. The generator is trained to produce realistic images of articulated objects from random poses and latent vectors by adversarial training. To avoid a high computational cost for GAN training, we propose an efficient neural representation for articulated o...
Generative Adversarial Networks (GAN) have many potential medical imaging applications, including da...
We introduce PlatonicGAN to discover the 3D structure of an object class from an unstructured collec...
We introduce 3inGAN, an unconditional 3D generative model trained from 2D images of a single self-si...
3D-aware generative adversarial networks (GANs) synthesize high-fidelity and multi-view-consistent f...
We present 3DHumanGAN, a 3D-aware generative adversarial network that synthesizes photorealistic ima...
Efficient representation of articulated objects such as human bodies is an important problem in comp...
Graduation date:2017Reasoning about 3D shape of objects is important for successful computer vision\...
Previous animatable 3D-aware GANs for human generation have primarily focused on either the human he...
We consider the problem of learning a function that can estimate the 3D shape, articulation, viewpoi...
Recent advancements in generative adversarial nets (GANs) and volumetric convolutional neural networ...
We present a unified and compact representation for object rendering, 3D reconstruction, and grasp p...
This thesis explores how to harness neural networks to learn 3D structure from visual data. Being ab...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
Neural image synthesis has seen enormous advances in recent years, led by innovations in GANs which ...
Generative Adversarial Networks (GAN) have many potential medical imaging applications, including da...
We introduce PlatonicGAN to discover the 3D structure of an object class from an unstructured collec...
We introduce 3inGAN, an unconditional 3D generative model trained from 2D images of a single self-si...
3D-aware generative adversarial networks (GANs) synthesize high-fidelity and multi-view-consistent f...
We present 3DHumanGAN, a 3D-aware generative adversarial network that synthesizes photorealistic ima...
Efficient representation of articulated objects such as human bodies is an important problem in comp...
Graduation date:2017Reasoning about 3D shape of objects is important for successful computer vision\...
Previous animatable 3D-aware GANs for human generation have primarily focused on either the human he...
We consider the problem of learning a function that can estimate the 3D shape, articulation, viewpoi...
Recent advancements in generative adversarial nets (GANs) and volumetric convolutional neural networ...
We present a unified and compact representation for object rendering, 3D reconstruction, and grasp p...
This thesis explores how to harness neural networks to learn 3D structure from visual data. Being ab...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
Neural image synthesis has seen enormous advances in recent years, led by innovations in GANs which ...
Generative Adversarial Networks (GAN) have many potential medical imaging applications, including da...
We introduce PlatonicGAN to discover the 3D structure of an object class from an unstructured collec...
We introduce 3inGAN, an unconditional 3D generative model trained from 2D images of a single self-si...