The scarcity of high quality actions video data is a bottleneck in the research and application of action recognition. Although significant effort has been made in this area, there still exist gaps in the range of available data types a more flexible and comprehensive data set could help bridge. In this paper, we present a new 3D actions data simulation engine and generate 3 sets of sample data to demonstrate its current functionalities. With the new data generation process, we demonstrate its applications to image classifications, action recognitions and potential to evolve into a system that would allow the exploration of much more complex action recognition tasks. In order to show off these capabilities, we also train and test a list of commonly used models for image recognition to demonstrate the potential applications and capabilities of the data sets and their generation process.
@article{arxiv.2310.00831,
title = {Action Recognition Utilizing YGAR Dataset},
author = {Shuo Wang and Amiya Ranjan and Lawrence Jiang},
journal= {arXiv preprint arXiv:2310.00831},
year = {2023}
}