Weakly-supervised HOI Detection via Prior-guided Bi-level Representation Learning
Abstract
Human object interaction (HOI) detection plays a crucial role in human-centric scene understanding and serves as a fundamental building-block for many vision tasks. One generalizable and scalable strategy for HOI detection is to use weak supervision, learning from image-level annotations only. This is inherently challenging due to ambiguous human-object associations, large search space of detecting HOIs and highly noisy training signal. A promising strategy to address those challenges is to exploit knowledge from large-scale pretrained models (e.g., CLIP), but a direct knowledge distillation strategy~\citep{liao2022gen} does not perform well on the weakly-supervised setting. In contrast, we develop a CLIP-guided HOI representation capable of incorporating the prior knowledge at both image level and HOI instance level, and adopt a self-taught mechanism to prune incorrect human-object associations. Experimental results on HICO-DET and V-COCO show that our method outperforms the previous works by a sizable margin, showing the efficacy of our HOI representation.
Keywords
Cite
@article{arxiv.2303.01313,
title = {Weakly-supervised HOI Detection via Prior-guided Bi-level Representation Learning},
author = {Bo Wan and Yongfei Liu and Desen Zhou and Tinne Tuytelaars and Xuming He},
journal= {arXiv preprint arXiv:2303.01313},
year = {2023}
}
Comments
Accepted by ICLR2023