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Creatures Great and SMAL: Recovering the Shape and Motion of Animals from Video

Accepted version
Peer-reviewed

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Type

Conference Object

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Authors

Roddick, T 
Fitzgibbon, A 

Abstract

We present a system to recover the 3D shape and motion of a wide variety of quadrupeds from video. The system comprises a machine learning front-end which predicts candidate 2D joint positions, a discrete optimization which finds kinematically plausible joint correspondences, and an energy minimization stage which fits a detailed 3D model to the image. In order to overcome the limited availability of motion capture training data from animals, and the difficulty of generating realistic synthetic training images, the system is designed to work on silhouette data. The joint candidate predictor is trained on synthetically generated silhouette images, and at test time, deep learning methods or standard video segmentation tools are used to extract silhouettes from real data. The system is tested on animal videos from several species, and shows accurate reconstructions of 3D shape and pose.

Description

Keywords

cs.CV, cs.CV

Journal Title

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Conference Name

Asian Conference on Computer Vision 2018

Journal ISSN

0302-9743
1611-3349

Volume Title

11365 LNCS

Publisher

Springer International Publishing
Sponsorship
GlaxoSmithKline