Children’s drawings have a wonderful inventiveness, creativity, and variety to them. We present a system that automatically animates children’s drawings of the human figure, is robust to the variance inherent in these depictions, and is simple and straightforward enough for anyone to use. We demonstrate the value and broad appeal of our approach by building and releasing the Animated Drawings Demo, a freely available public website that has been used by millions of people around the world. We present a set of experiments exploring the amount of training data needed for fine-tuning, as well as a perceptual study demonstrating the appeal of a novel twisted perspective retargeting technique. Finally, we introduce the Amateur Drawings Dataset, a first-of-its-kind annotated dataset, collected via the public demo, containing 180,000 amateur drawings and corresponding user-accepted character bounding box, segmentation mask, and joint location annotations.
Follow our Github repository Animated Drawings
Try animating your own drawing HERE.
See https://fairanimateddrawings.com/site/home
We have open sourced our dataset of ~180,000 annotated drawings, which you can explore for your own research.
Demo:
@article{10.1145/3592788,
author = {Smith, Harrison Jesse and Zheng, Qingyuan and Li, Yifei and Jain, Somya and Hodgins, Jessica K.},
title = {A Method for Animating Children’s Drawings of the Human Figure},
year = {2023},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
issn = {0730-0301},
url = {https://doi.org/10.1145/3592788},
doi = {10.1145/3592788},
note = {Just Accepted},
journal = {ACM Trans. Graph.},
month = {apr}
}
We would like to thank FAIR Interfaces, FAIR X, and other members of Meta who helped in the building and release of the demo
graphics, animation, image manipulation, machine learning, drawings, children drawings, non-photorealistic rendering, line drawing, computer graphics, dataset, image dataset