BARC: Learning to Regress 3D Dog Shape from Images by Exploiting Breed Information

Barc_image

Our goal is to recover the 3D shape and pose of dogs from a single image. This is a challenging task because dogs exhibit a wide range of shapes and appearances, and are highly articulated. Recent work has proposed to directly regress the SMAL animal model, with additional limb scale parameters, from images. Our method, called BARC (Breed-Augmented Regression using Classification), goes beyond prior work in several important ways. First, we modify the SMAL shape space to be more appropriate for representing dog shape. But, even with a better shape model, the problem of regressing dog shape from an image is still challenging because we lack paired images with 3D ground truth. To compensate for the lack of paired data, we formulate novel losses that exploit information about dog breeds. In particular, we exploit the fact that dogs of the same breed have similar body shapes. We formulate a novel breed similarity loss consisting of two parts: One term encourages the shape of dogs from the same breed to be more similar than dogs of different breeds. The second one, a breed classification loss, helps to produce recognizable breed-specific shapes.
Through ablation studies, we find that our breed losses significantly improve shape accuracy over a baseline without them. We also compare BARC qualitatively to WLDO with a perceptual study and find that our approach produces dogs that are significantly more realistic. This work shows that a-priori information about genetic similarity can help to compensate for the lack of 3D training data. This concept may be applicable to other animal species or groups of species.

For more information on BARC, please visit our project page: external pagehttps://barc.is.tue.mpg.de/
 

Publication:
N. Rueegg, S. Zuffi, K. Schindler, M. J. Black
: external pageBARC: Learning to Regress 3D Dog Shape from Images by Exploiting Breed Information, IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2022
 

Contacts:
Nadine Rüegg ()
Konrad Schindler ()

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