Social Diffusion: Long-term Multiple Human Motion Anticipation
We propose Social Diffusion, a novel method for short-term and long-term forecasting of the motion of multiple persons as well as their social interactions. Jointly forecasting motions for multiple persons involved in social activities is inherently a challenging problem due to the interdependencies between individuals. In this work, we leverage a diffusion model conditioned on motion histories and causal temporal convolutional networks to forecast individually and contextually plausible motions for all participants. The contextual plausibility is achieved via an order-invariant aggregation function. As a second contribution, we design a new evaluation protocol that measures the plausibility of social interactions which we evaluate on the Haggling dataset, which features a challenging social activity where people are actively taking turns to talk and switching their attention. We evaluate our approach on four datasets for multi-person forecasting where our approach outperforms the state-of-the-art in terms of motion realism and contextual plausibility.
- Published in:
IEEE/CVF International Conference on Computer Vision - Type:
Inproceedings - Authors:
Tanke, Julian; Zhang, Linguang; Zhao, Amy; Tang, Chengcheng; Cai, Yujun; Wang, Lezi; Wu, Po-Chen; Gall, Jürgen; Keskin, Cem - Year:
2023
Citation information
Tanke, Julian; Zhang, Linguang; Zhao, Amy; Tang, Chengcheng; Cai, Yujun; Wang, Lezi; Wu, Po-Chen; Gall, Jürgen; Keskin, Cem: Social Diffusion: Long-term Multiple Human Motion Anticipation, IEEE/CVF International Conference on Computer Vision, 2023, October, https://ieeexplore.ieee.org/document/10377480, Tanke.etal.2023b,
@Inproceedings{Tanke.etal.2023b,
author={Tanke, Julian; Zhang, Linguang; Zhao, Amy; Tang, Chengcheng; Cai, Yujun; Wang, Lezi; Wu, Po-Chen; Gall, Jürgen; Keskin, Cem},
title={Social Diffusion: Long-term Multiple Human Motion Anticipation},
booktitle={IEEE/CVF International Conference on Computer Vision},
month={October},
url={https://ieeexplore.ieee.org/document/10377480},
year={2023},
abstract={We propose Social Diffusion, a novel method for short-term and long-term forecasting of the motion of multiple persons as well as their social interactions. Jointly forecasting motions for multiple persons involved in social activities is inherently a challenging problem due to the interdependencies between individuals. In this work, we leverage a diffusion model conditioned on motion histories...}}