Jing Gao

Associate Professor   Supervisor of Master's Candidates

Gender:Female

Alma Mater:Harbin Institute of Technology

Degree:Doctoral Degree

School/Department:School of Software

Contact Information:gaojing@dlut.edu.cn

E-Mail:gaojing@dlut.edu.cn


Paper Publications

A Survey on Deep Learning for Multimodal Data Fusion

Hits:

Indexed by:Journal Papers

Date of Publication:2020-05-01

Journal:NEURAL COMPUTATION

Included Journals:PubMed、SCIE

Volume:32

Issue:5

Page Number:829-864

ISSN No.:0899-7667

Abstract:With the wide deployments of heterogeneous networks, huge amounts of data with characteristics of high volume, high variety, high velocity, and high veracity are generated. These data, referred to multimodal big data, contain abundant intermodality and cross-modality information and pose vast challenges on traditional data fusion methods. In this review, we present some pioneering deep learning models to fuse these multimodal big data. With the increasing exploration of the multimodal big data, there are still some challenges to be addressed. Thus, this review presents a survey on deep learning for multimodal data fusion to provide readers, regardless of their original community, with the fundamentals of multimodal deep learning fusion method and to motivate new multimodal data fusion techniques of deep learning. Specifically, representative architectures that are widely used are summarized as fundamental to the understanding of multimodal deep learning. Then the current pioneering multimodal data fusion deep learning models are summarized. Finally, some challenges and future topics of multimodal data fusion deep learning models are described.

Pre One:Incomplete Multiview Clustering via Semidiscrete Optimal Transport for Multimedia Data Mining in IoT

Next One:A hybrid deep computation model for feature learning on aero-engine data: applications to fault detection