scholarly journals Unpaired motion style transfer from video to animation

2020 ◽  
Vol 39 (4) ◽  
Author(s):  
Kfir Aberman ◽  
Yijia Weng ◽  
Dani Lischinski ◽  
Daniel Cohen-Or ◽  
Baoquan Chen
Keyword(s):  
2021 ◽  
Vol 2021 ◽  
pp. 1-17
Author(s):  
Huaijun Wang ◽  
Dandan Du ◽  
Junhuai Li ◽  
Wenchao Ji ◽  
Lei Yu

Motion capture technology plays an important role in the production field of film and television, animation, etc. In order to reduce the cost of data acquisition and improve the reuse rate of motion capture data and the effect of movement style migration, the synthesis technology of motion capture data in human movement has become a research hotspot in this field. In this paper, kinematic constraints (KC) and cyclic consistency (CC) network are employed to study the methods of kinematic style migration. Firstly, cycle-consistent adversarial network (CCycleGAN) is constructed, and the motion style migration network based on convolutional self-encoder is used as a generator to establish the cyclic consistent constraint between the generated motion and the content motion, so as to improve the action consistency between the generated motion and the content motion and eliminate the lag phenomenon of the generated motion. Then, kinematic constraints are introduced to normalize the movement generation, so as to solve the problems such as jitter and sliding step in the movement style migration results. Experimental results show that the generated motion of the cyclic consistent style transfer method with kinematic constraints is more similar to the style of style motion, which improves the effect of motion style transfer.


Author(s):  
Khac Phong Do ◽  
Nguyen Xuan Thanh ◽  
Hongchuan Yu

Motion style transfer is a primary problem in computer animation, allowing us to convert the motion of an actor to that of another one. Myriads approaches have been developed to perform this task, however, the majority of them are data-driven, which require a large dataset and a time-consuming period for training a model in order to achieve good results. In contrast, we propose a novel method applied successfully for this task in a small dataset. This exploits Sparse PCA to decompose original motions into smaller components which are learned with particular constraints. The synthesized results are highly precise and smooth motions with its emotion as shown in our experiments.


Author(s):  
Harrison Jesse Smith ◽  
Chen Cao ◽  
Michael Neff ◽  
Yingying Wang

Author(s):  
Christian Kurz ◽  
Tobias Ritschel ◽  
Elmar Eisemann ◽  
Thorsten Thormahlen ◽  
Hans-Peter Seidel

Author(s):  
Xiaomao Wu ◽  
Lizhuang Ma ◽  
Can Zheng ◽  
Yanyun Chen ◽  
Ke-Sen Huang
Keyword(s):  
On Line ◽  

Author(s):  
Yuzhu Dong ◽  
Andreas Aristidou ◽  
Ariel Shamir ◽  
Moshe Mahler ◽  
Eakta Jain
Keyword(s):  

Sign in / Sign up

Export Citation Format

Share Document