首页|Multi-level fusion with deep neural networks for multimodal sentiment classification

Multi-level fusion with deep neural networks for multimodal sentiment classification

扫码查看
The task of multimodal sentiment classification aims to associate multimodal information,such as images and texts with appropriate sentiment polarities.There are various levels that can affect human sentiment in visual and textual modalities.However,most existing methods treat various levels of features independently without having effective method for feature fusion.In this paper,we propose a multi-level fusion classification(MFC)model to predict the sentiment polarity based on the fusing features from different levels by exploiting the dependency among them.The proposed architecture leverages convolutional neural networks(CNNs)with multiple layers to extract levels of features in image and text modalities.Considering the dependencies within the low-level and high-level features,a bi-directional(Bi)recurrent neural network(RNN)is adopted to integrate the learned features from different layers in CNNs.In addition,a conflict detection module is incorporated to address the conflict between modalities.Experiments on the Flickr dataset demonstrate that the MFC method achieves comparable performance compared with strong baseline methods.

multimodal fusionsentiment analysisdeep learning

Zhang Guangwei、Zhao Bing、Li Ruifan

展开 >

School of Computer Sciences,Beijing University of Posts and Communications,Beijing 100876,China

School of Science,Yanshan University,Qinhuangdao 066004,China

School of Artificial Intelligence,Beijing University of Posts and Communications,Beijing 100876,China

National Key Research and Development(R&D)Program of China

2018YFB1403003

2022

中国邮电高校学报(英文版)
北京邮电大学

中国邮电高校学报(英文版)

CSCD
影响因子:0.419
ISSN:1005-8885
年,卷(期):2022.29(3)
  • 39