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图像多标签学习的研究概述
引用本文:袁梦奇,鲍秉坤.图像多标签学习的研究概述[J].南京气象学院学报,2019,11(6):682-689.
作者姓名:袁梦奇  鲍秉坤
作者单位:南京邮电大学 通信与信息工程学院, 南京, 210003,南京邮电大学 通信与信息工程学院, 南京, 210003
基金项目:国家自然科学基金(61572503,61872424,6193000388);南京邮电大学高层次人才启动基金(NY218001);模式识别国家重点实验室开放课题(201900015)
摘    要:随着图像大数据的爆发,特别是用户贡献数据的飞速增长,图像样本的语义内容越来越丰富,标签信息也随之越来越复杂.因此图像多标签学习的研究是近年来学术圈和产业界的研究热点之一,涌现了大量表现优异的方法和技术.基于此,本文将对近年来图像多标签学习上的研究成果进行总结.首先,对多标签学习进行简单介绍,并详述其主流方法的分类;随后,针对目前大数据时代的数据特性,总结了多标签学习面临的新的技术难点及其对应的解决方案;最后,在应用层面上介绍了多标签学习在医学、计算机科学等领域的应用实例.

关 键 词:多标签学习  图像标注  深度学习  大数据
收稿时间:2019/10/15 0:00:00

A survey of image multi-label learning
YUAN Mengqi and BAO Bingkun.A survey of image multi-label learning[J].Journal of Nanjing Institute of Meteorology,2019,11(6):682-689.
Authors:YUAN Mengqi and BAO Bingkun
Institution:School of Communication and Information Engineering, Nanjing University of Posts and Telecommunications, Nanjing 210003 and School of Communication and Information Engineering, Nanjing University of Posts and Telecommunications, Nanjing 210003
Abstract:With the fast growing number of images,especially the user-generated ones,the semantic content of images become richer,and labels become more complex.Therefore,the study on image multi-label learning is one of the hot research areas in both academia and industry,and a large number of efficient methods have emerged in recent years.This paper surveys the existing work on image multi-label learning in recent years.Firstly,we briefly describe the concept of multi-label learning and introduce two types of methods,that is,single-instance multi-label learning and multi-instance multi-label learning.Then,we summarize three challenges on multi-label learning caused by the big data characteristics,and provide related work which can handle these challenges.Finally,we elaborate two applications on image recognition and automatic drive to show that multi-label learning techniques can be effective for many application scenarios.
Keywords:multi-label learning  image annotation  deep learning  big data
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