We introduce an automatic, end-to-end method for recovering the 3D pose and shape of dogs from monocular internet images. The large variation in shape between dog breeds, significant occlusion and low quality of internet images makes this a challenging problem. We learn a richer prior over shapes than previous work, which helps regularize parameter estimation. We demonstrate results on the Stanford Dog dataset, an 'in the wild' dataset of 20,580 dog images for which we have collected 2D joint and silhouette annotations to split for training and evaluation. In order to capture the large shape variety of dogs, we show that the natural variation in the 2D dataset is enough to learn a detailed 3D prior through expectation maximization (EM). As ...
Abstract In this paper, we introduce an image dataset for fine-grained classification of dog breeds:...
Recent contributions have demonstrated that it is possible to recognize the pose of humans densely a...
Reconstructing the 3D shape and pose of humans and animals is essential in many future applications,...
We introduce an automatic, end-to-end method for recovering the 3D pose and shape of dogs from monoc...
Our goal is to recover the 3D shape and pose of dogs from a single image. This is a challenging task...
Estimating the pose of animals facilitates the understanding of animal motion and can permit the ear...
Creating high-quality articulated 3D models of animals is challenging either via manual creation or ...
We present a system to recover the 3D shape and motion of a wide variety of quadrupeds from video. T...
Accurate 3D tracking of animals from video recordings is critical for many behavioral studies. Howe...
We propose an end-to-end unified 3D mesh recovery of humans and quadruped animals trained in a weakl...
Human and non-human pose estimation has been studied within the computer vision community for many d...
Using 2D contour sketches as input is an attractive solution for easing the creation of 3D models. T...
Animal pose estimation tools based on deep learning have greatly improved animal behaviour quantific...
Flying animals such as bats, birds, and moths are actively studied by researchers wanting to better ...
Despite pattern recognition methods for human behavioral analysis has flourished in the last decade,...
Abstract In this paper, we introduce an image dataset for fine-grained classification of dog breeds:...
Recent contributions have demonstrated that it is possible to recognize the pose of humans densely a...
Reconstructing the 3D shape and pose of humans and animals is essential in many future applications,...
We introduce an automatic, end-to-end method for recovering the 3D pose and shape of dogs from monoc...
Our goal is to recover the 3D shape and pose of dogs from a single image. This is a challenging task...
Estimating the pose of animals facilitates the understanding of animal motion and can permit the ear...
Creating high-quality articulated 3D models of animals is challenging either via manual creation or ...
We present a system to recover the 3D shape and motion of a wide variety of quadrupeds from video. T...
Accurate 3D tracking of animals from video recordings is critical for many behavioral studies. Howe...
We propose an end-to-end unified 3D mesh recovery of humans and quadruped animals trained in a weakl...
Human and non-human pose estimation has been studied within the computer vision community for many d...
Using 2D contour sketches as input is an attractive solution for easing the creation of 3D models. T...
Animal pose estimation tools based on deep learning have greatly improved animal behaviour quantific...
Flying animals such as bats, birds, and moths are actively studied by researchers wanting to better ...
Despite pattern recognition methods for human behavioral analysis has flourished in the last decade,...
Abstract In this paper, we introduce an image dataset for fine-grained classification of dog breeds:...
Recent contributions have demonstrated that it is possible to recognize the pose of humans densely a...
Reconstructing the 3D shape and pose of humans and animals is essential in many future applications,...