Back to Search Start Over

MMViT: Multiscale Multiview Vision Transformers

Authors :
Liu, Yuchen
Ong, Natasha
Peng, Kaiyan
Xiong, Bo
Wang, Qifan
Hou, Rui
Khabsa, Madian
Yang, Kaiyue
Liu, David
Williamson, Donald S.
Yu, Hanchao
Liu, Yuchen
Ong, Natasha
Peng, Kaiyan
Xiong, Bo
Wang, Qifan
Hou, Rui
Khabsa, Madian
Yang, Kaiyue
Liu, David
Williamson, Donald S.
Yu, Hanchao
Publication Year :
2023

Abstract

We present Multiscale Multiview Vision Transformers (MMViT), which introduces multiscale feature maps and multiview encodings to transformer models. Our model encodes different views of the input signal and builds several channel-resolution feature stages to process the multiple views of the input at different resolutions in parallel. At each scale stage, we use a cross-attention block to fuse information across different views. This enables the MMViT model to acquire complex high-dimensional representations of the input at different resolutions. The proposed model can serve as a backbone model in multiple domains. We demonstrate the effectiveness of MMViT on audio and image classification tasks, achieving state-of-the-art results.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381621709
Document Type :
Electronic Resource