HuMoT: Human Motion Representation using Topology-Agnostic Transformers for Character Animation Retargeting

05/30/2023
by   Lucas Mourot, et al.
0

Motion retargeting is the long-standing problem in character animation that consists in transferring and adapting the motion of a source character to another target character. A typical application is the creation of motion sequences from off-the-shelf motions by transferring them onto new characters. Motion retargeting is also promising to increase interoperability of existing animation systems and motion databases, as they often differ in the structure of the skeleton(s) considered. Moreover, since the goal of motion retargeting is to abstract and transfer motion dynamics, effective solutions might provide expressive and powerful human motion models in which operations such as cleaning or editing are easier. In this article, we present a novel neural network architecture for retargeting that extracts an abstract representation of human motion agnostic to skeleton topology and morphology. Based on transformers, our model is able to encode and decode motion sequences with variable morphology and topology – extending the current scope of retargeting – while supporting skeleton topologies not seen during the training phase. More specifically, our model is structured as an autoencoder, and encoding and decoding are separately conditioned on skeleton templates to extract and control morphology and topology. Beyond motion retargeting, our model has many applications since our abstract representation is a convenient space to embed motion data from different sources. It may potentially be benefical to a number of data-driven methods, allowing them to combine scarce specialised motion datasets (e.g. with style or contact annotations) and larger general motion datasets, for improved performance and generalisation ability. Moreover, we show that our model can be useful for other applications beyond retargeting, including motion denoising and joint upsampling.

READ FULL TEXT

page 2

page 4

page 5

page 9

page 13

page 15

research
05/05/2019

Learning Character-Agnostic Motion for Motion Retargeting in 2D

Analyzing human motion is a challenging task with a wide variety of appl...
research
11/27/2021

A Hierarchy-Aware Pose Representation for Deep Character Animation

Data-driven character animation techniques rely on the existence of a pr...
research
05/12/2020

Unpaired Motion Style Transfer from Video to Animation

Transferring the motion style from one animation clip to another, while ...
research
12/19/2021

MoCaNet: Motion Retargeting in-the-wild via Canonicalization Networks

We present a novel framework that brings the 3D motion retargeting task ...
research
09/15/2021

Contact-Aware Retargeting of Skinned Motion

This paper introduces a motion retargeting method that preserves self-co...
research
04/16/2018

Neural Kinematic Networks for Unsupervised Motion Retargetting

We propose a recurrent neural network architecture with a Forward Kinema...
research
05/12/2020

Skeleton-Aware Networks for Deep Motion Retargeting

We introduce a novel deep learning framework for data-driven motion reta...

Please sign up or login with your details

Forgot password? Click here to reset