Back to Search Start Over

Vision-language Assisted Attribute Learning

Authors :
Liang, Kongming
Wang, Xinran
Wang, Rui
Gao, Donghui
Jin, Ling
Liu, Weidong
Zhu, Xiatian
Ma, Zhanyu
Guo, Jun
Publication Year :
2023

Abstract

Attribute labeling at large scale is typically incomplete and partial, posing significant challenges to model optimization. Existing attribute learning methods often treat the missing labels as negative or simply ignore them all during training, either of which could hamper the model performance to a great extent. To overcome these limitations, in this paper we leverage the available vision-language knowledge to explicitly disclose the missing labels for enhancing model learning. Given an image, we predict the likelihood of each missing attribute label assisted by an off-the-shelf vision-language model, and randomly select to ignore those with high scores in training. Our strategy strikes a good balance between fully ignoring and negatifying the missing labels, as these high scores are found to be informative on revealing label ambiguity. Extensive experiments show that our proposed vision-language assisted loss can achieve state-of-the-art performance on the newly cleaned VAW dataset. Qualitative evaluation demonstrates the ability of the proposed method in predicting more complete attributes.<br />Comment: Accepted by IEEE IC-NIDC 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.07009
Document Type :
Working Paper