MarkerNet: A divide‐and‐conquer solution to motion capture solving from raw markers

Author:

Hu Zhipeng1,Tang Jilin2ORCID,Li Lincheng2,Hou Jie2,Xin Haoran2,Yu Xin3,Bu Jiajun1

Affiliation:

1. Zhejiang University Hangzhou Zhejiang China

2. NetEase Fuxi AI Lab Hangzhou Zhejiang China

3. University of Queensland Brisbane Australia

Abstract

AbstractMarker‐based optical motion capture (MoCap) aims to localize 3D human motions from a sequence of input raw markers. It is widely used to produce physical movements for virtual characters in various games such as the role‐playing game, the fighting game, and the action‐adventure game. However, the conventional MoCap cleaning and solving process is extremely labor‐intensive, time‐consuming, and usually the most costly part of game animation production. Thus, there is a high demand for automated algorithms to replace costly manual operations and achieve accurate MoCap cleaning and solving in the game industry. In this article, we design a divide‐and‐conquer‐based MoCap solving network, dubbed MarkerNet, to estimate human skeleton motions from sequential raw markers effectively. In a nutshell, our key idea is to decompose the task of direct solving of global motion from all markers into first modeling sub‐motions of local parts from the corresponding marker subsets and then aggregating sub‐motions into a global one. In this manner, our model can effectively capture local motion patterns w.r.t. different marker subsets, thus producing more accurate results compared to the existing methods. Extensive experiments on both real and synthetic data verify the effectiveness of the proposed method.

Publisher

Wiley

Subject

Computer Graphics and Computer-Aided Design,Software

Reference46 articles.

1. Robust solving of optical motion capture data by denoising

2. Robust marker trajectory repair for mocap using kinematic reference;Perepichka M;Motion, Interact Games,2019

3. Mocap‐solver: A neural solver for optical motion capture data;Chen K;ACM Trans Graph,2021

4. Deep learning

5. ImageNet classification with deep convolutional neural networks

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