Saved in:
Bibliographic Details
Main Authors: Bian, Tongfei, Chollet, Mathieu, Guha, Tanaya
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.06278
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909868920668160
author Bian, Tongfei
Chollet, Mathieu
Guha, Tanaya
author_facet Bian, Tongfei
Chollet, Mathieu
Guha, Tanaya
contents There is a growing need for social robots and intelligent agents that can effectively interact with and support users. For the interactions to be seamless, the agents need to analyse social scenes and behavioural cues from their (robot's) perspective. Works that model human-agent interactions in social situations are few; and even those existing ones are computationally too intensive to be deployed in real time or perform poorly in real-world scenarios when only limited information is available. We propose a knowledge distillation framework that models social interactions through various multimodal cues, and yet is robust against incomplete and noisy information during inference. We train a teacher model with multimodal input (body, face and hand gestures, gaze, raw images) that transfers knowledge to a student model which relies solely on body pose. Extensive experiments on two publicly available human-robot interaction datasets demonstrate that our student model achieves an average accuracy gain of 14.75% over competitive baselines on multiple downstream social understanding tasks, even with up to 51% of its input being corrupted. The student model is also highly efficient - less than 1% in size of the teacher model in terms of parameters and its latency is 11.9% of the teacher model. Our code and related data are available at github.com/biantongfei/SocialEgoMobile.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06278
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Robust Understanding of Human-Robot Social Interactions through Multimodal Distillation
Bian, Tongfei
Chollet, Mathieu
Guha, Tanaya
Robotics
Human-Computer Interaction
There is a growing need for social robots and intelligent agents that can effectively interact with and support users. For the interactions to be seamless, the agents need to analyse social scenes and behavioural cues from their (robot's) perspective. Works that model human-agent interactions in social situations are few; and even those existing ones are computationally too intensive to be deployed in real time or perform poorly in real-world scenarios when only limited information is available. We propose a knowledge distillation framework that models social interactions through various multimodal cues, and yet is robust against incomplete and noisy information during inference. We train a teacher model with multimodal input (body, face and hand gestures, gaze, raw images) that transfers knowledge to a student model which relies solely on body pose. Extensive experiments on two publicly available human-robot interaction datasets demonstrate that our student model achieves an average accuracy gain of 14.75% over competitive baselines on multiple downstream social understanding tasks, even with up to 51% of its input being corrupted. The student model is also highly efficient - less than 1% in size of the teacher model in terms of parameters and its latency is 11.9% of the teacher model. Our code and related data are available at github.com/biantongfei/SocialEgoMobile.
title Robust Understanding of Human-Robot Social Interactions through Multimodal Distillation
topic Robotics
Human-Computer Interaction
url https://arxiv.org/abs/2505.06278