Authors
Soujanya Poria, Haiyun Peng, Amir Hussain, Newton Howard, Erik Cambria
Publication date
2017/10/25
Journal
Neurocomputing
Volume
261
Pages
217-230
Publisher
Elsevier
Description
The advent of the Social Web has enabled anyone with an Internet connection to easily create and share their ideas, opinions and content with millions of other people around the world. In pace with a global deluge of videos from billions of computers, smartphones, tablets, university projectors and security cameras, the amount of multimodal content on the Web has been growing exponentially, and with that comes the need for decoding such information into useful knowledge. In this paper, a multimodal affective data analysis framework is proposed to extract user opinion and emotions from video content. In particular, multiple kernel learning is used to combine visual, audio and textual modalities. The proposed framework outperforms the state-of-the-art model in multimodal sentiment analysis research with a margin of 10–13% and 3–5% accuracy on polarity detection and emotion recognition, respectively. The …
Total citations
20162017201820192020202120222023202411527433338223016