Holistic Visual-Textual Sentiment Analysis with Prior Models
Abstract
Visual-textual sentiment analysis aims to predict sentiment with the input of a pair of image and text, which poses a challenge in learning effective features for diverse input images. To address this, we propose a holistic method that achieves robust visual-textual sentiment analysis by exploiting a rich set of powerful pre-trained visual and textual prior models. The proposed method consists of four parts: (1) a visual-textual branch to learn features directly from data for sentiment analysis, (2) a visual expert branch with a set of pre-trained "expert" encoders to extract selected semantic visual features, (3) a CLIP branch to implicitly model visual-textual correspondence, and (4) a multimodal feature fusion network based on BERT to fuse multimodal features and make sentiment predictions. Extensive experiments on three datasets show that our method produces better visual-textual sentiment analysis performance than existing methods.
Cite
@article{arxiv.2211.12981,
title = {Holistic Visual-Textual Sentiment Analysis with Prior Models},
author = {Junyu Chen and Jie An and Hanjia Lyu and Christopher Kanan and Jiebo Luo},
journal= {arXiv preprint arXiv:2211.12981},
year = {2024}
}
Comments
Published in MIPR 2024