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全监督学习的图像语义分割方法研究进展
引用本文:袁铭阳,黄宏博,周长胜.全监督学习的图像语义分割方法研究进展[J].计算机工程与应用,2021,57(4):43-54.
作者姓名:袁铭阳  黄宏博  周长胜
作者单位:1.北京信息科技大学 计算机学院,北京 100101 2.北京信息科技大学 计算智能研究所,北京 100192
基金项目:北京市教委科技计划一般项目;北京信息科技大学促进高校内涵发展"信息+"项目-多源光谱生物特征活体识别平台建设;北京信息科技大学高教研究重点项目
摘    要:近年来,随着深度学习进入计算机视觉领域,各种深度学习图像语义分割方法相继出现,其中全监督学习方法的分割效果显著超过弱监督学习方法。将全监督学习的图像语义分割方法分为五类,并对各类中最具有代表性的方法进行详细分析,重点阐述各种方法核心部分的实现过程。对语义分割领域中的主流数据集进行归纳总结,介绍了性能算法指标,并在主流数据集上对各种代表性方法的效果进行对比,最后对语义分割的未来进行展望。

关 键 词:计算机视觉  图像语义分割  深度学习  语义分割方法  全监督学习  

Research Progress of Image Semantic Segmentation Based on Fully Supervised Learning
YUAN Mingyang,HUANG Hongbo,ZHOU Changsheng.Research Progress of Image Semantic Segmentation Based on Fully Supervised Learning[J].Computer Engineering and Applications,2021,57(4):43-54.
Authors:YUAN Mingyang  HUANG Hongbo  ZHOU Changsheng
Affiliation:1.School of Computer Science, Beijing Information Science and Technology University, Beijing 100101, China 2.Institute of Computational Intelligence, Beijing Information Science and Technology University, Beijing 100192, China
Abstract:In recent years, as deep learning enters the field of computer vision, various deep learning image semantic segmentation methods that are superior to traditional methods have appeared one after another, including fully supervised learning, the segmentation effect of the method significantly exceeds that of weakly supervised learning method, the image semantic segmentation methods of fully supervised learning are divided into five categories, and the most representative methods of the various types are analyzed in detail, and the implementation processes of the core components of each method are emphasized. After that, this paper summarizes the mainstream data sets in the field of semantic segmentation, introduces the performance algorithm indicators, and compares the effects of various representative methods on the mainstream data sets, and finally looks forward to the future of semantic segmentation.
Keywords:computer vision  image semantic segmentation  deep learning  semantic segmentation method  fully supervised learning  
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