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Multimodal Graph Transformer for Multimodal Question Answering - 2023


Multimodal Graph Transformer for Multimodal Question Answering |S-Logix

Research Area:  Machine Learning

Abstract:

Despite the success of Transformer models in vision and language tasks, they often learn knowledge from enormous data implicitly and cannot utilize structured input data directly. On the other hand, structured learning approaches such as graph neural networks (GNNs) that integrate prior information can barely compete with Transformer models. In this work, we aim to benefit from both worlds and propose a novel Multimodal Graph Transformer for question answering tasks that requires performing reasoning across multiple modalities. We introduce a graph-involved plug-and-play quasi-attention mechanism to incorporate multimodal graph information, acquired from text and visual data, to the vanilla self-attention as effective prior. In particular, we construct the text graph, dense region graph, and semantic graph to generate adjacency matrices, and then compose them with input vision and language features to perform downstream reasoning. Such a way of regularizing self-attention with graph information significantly improves the inferring ability and helps align features from different modalities. We validate the effectiveness of Multimodal Graph Transformer over its Transformer baselines on GQA, VQAv2, and MultiModalQA datasets.

Keywords:  
Transformer
Vision
Language tasks
Graph Neural Networks
Question Answering
GQA
VQAv2

Author(s) Name:  Xuehai He, Xin Eric Wang

Journal name:  Computer Vision and Pattern Recognition

Conferrence name:  

Publisher name:  arXiv

DOI:  https://doi.org/10.48550/arXiv.2305.00581

Volume Information:  volume: 1