MAST: Multimodal Abstractive Summarization with Trimodal Hierarchical Attention

10/15/2020
by   Aman Khullar, et al.
7

This paper presents MAST, a new model for Multimodal Abstractive Text Summarization that utilizes information from all three modalities – text, audio and video – in a multimodal video. Prior work on multimodal abstractive text summarization only utilized information from the text and video modalities. We examine the usefulness and challenges of deriving information from the audio modality and present a sequence-to-sequence trimodal hierarchical attention-based model that overcomes these challenges by letting the model pay more attention to the text modality. MAST outperforms the current state of the art model (video-text) by 2.51 points in terms of Content F1 score and 1.00 points in terms of Rouge-L score on the How2 dataset for multimodal language understanding.

READ FULL TEXT
research
06/19/2019

Multimodal Abstractive Summarization for How2 Videos

In this paper, we study abstractive summarization for open-domain videos...
research
01/11/2017

Attention-Based Multimodal Fusion for Video Description

Currently successful methods for video description are based on encoder-...
research
07/06/2023

Read, Look or Listen? What's Needed for Solving a Multimodal Dataset

The prevalence of large-scale multimodal datasets presents unique challe...
research
05/17/2021

AudioVisual Video Summarization

Audio and vision are two main modalities in video data. Multimodal learn...
research
07/02/2019

E-Sports Talent Scouting Based on Multimodal Twitch Stream Data

We propose and investigate feasibility of a novel task that consists in ...
research
08/07/2018

A Joint Sequence Fusion Model for Video Question Answering and Retrieval

We present an approach named JSFusion (Joint Sequence Fusion) that can m...
research
11/10/2019

A Multimodal CNN-based Tool to Censure Inappropriate Video Scenes

Due to the extensive use of video-sharing platforms and services for the...

Please sign up or login with your details

Forgot password? Click here to reset