A review on multimodal zero‐shot learning

Author:

Cao Weipeng1ORCID,Wu Yuhao1,Sun Yixuan2,Zhang Haigang3,Ren Jin3ORCID,Gu Dujuan4,Wang Xingkai4

Affiliation:

1. Guangdong Laboratory of Artificial Intelligence and Digital Economy (SZ) Shenzhen China

2. Anhui University New York Stony Brook College Anhui University Hefei China

3. Institute of Applied Artificial Intelligence of the Guangdong‐Hong Kong‐Macao Greater Bay Area Shenzhen Polytechnic Shenzhen China

4. NSFOCUS Technologies Group Co., Ltd Beijing China

Abstract

AbstractMultimodal learning provides a path to fully utilize all types of information related to the modeling target to provide the model with a global vision. Zero‐shot learning (ZSL) is a general solution for incorporating prior knowledge into data‐driven models and achieving accurate class identification. The combination of the two, known as multimodal ZSL (MZSL), can fully exploit the advantages of both technologies and is expected to produce models with greater generalization ability. However, the MZSL algorithms and applications have not yet been thoroughly investigated and summarized. This study fills this gap by providing an objective overview of MZSL's definition, typical algorithms, representative applications, and critical issues. This article will not only provide researchers in this field with a comprehensive perspective, but it will also highlight several promising research directions.This article is categorized under: Algorithmic Development > Multimedia Technologies > Classification Technologies > Machine Learning

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

General Computer Science

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