In this paper, we present the solution of our team HFUT-VUT for the MultiMediate Grand Challenge 2023 at ACM Multimedia 2023. The solution covers three sub-challenges: bodily behavior recognition, eye contact detection, and next speaker prediction. We select Swin Transformer as the baseline and exploit data augmentation strategies to address the above three tasks. Specifically, we crop the raw video to remove the noise from other parts. At the same time, we utilize data augmentation to improve the generalization of the model. As a result, our solution achieves the best results of 0.6262 for bodily behavior recognition in terms of mean average precision and the accuracy of 0.7771 for eye contact detection on the corresponding test set. In addition, our approach also achieves comparable results of 0.5281 for the next speaker prediction in terms of unweighted average recall.
@article{arxiv.2308.01526,
title = {Data Augmentation for Human Behavior Analysis in Multi-Person Conversations},
author = {Kun Li and Dan Guo and Guoliang Chen and Feiyang Liu and Meng Wang},
journal= {arXiv preprint arXiv:2308.01526},
year = {2023}
}
Comments
Solutions of HFUT-VUT Team at the ACM MM 2023 Grand Challenge (MultiMediate: Multi-modal Behaviour Analysis for Artificial Mediation). Accepted at ACM MM 2023