A Survey of Object Co-Segmentation

It is widely acknowledged that object segmentation is a significant research field for computer vision and a key process for many other visual tasks. In the past unsupervised single-image segmentation, there are often cases where the segmentation result is not good. In the current supervised single-...

Full description

Bibliographic Details
Main Authors: Zhoumin Lu, Haiping Xu, Genggeng Liu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8715354/
id doaj-d37dc83dea564f58b6076c97c948fd16
record_format Article
spelling doaj-d37dc83dea564f58b6076c97c948fd162021-03-29T22:58:43ZengIEEEIEEE Access2169-35362019-01-017628756289310.1109/ACCESS.2019.29171528715354A Survey of Object Co-SegmentationZhoumin Lu0https://orcid.org/0000-0002-3056-5622Haiping Xu1Genggeng Liu2College of Mathematics and Computer Science, Fuzhou University, Fuzhou, ChinaCollege of Mathematics and Data Science, Minjiang University, Fuzhou, ChinaCollege of Mathematics and Computer Science, Fuzhou University, Fuzhou, ChinaIt is widely acknowledged that object segmentation is a significant research field for computer vision and a key process for many other visual tasks. In the past unsupervised single-image segmentation, there are often cases where the segmentation result is not good. In the current supervised single-image segmentation, it is necessary to rely on a large number of data annotations and long-term training of the model. Then, people attempted to segment simultaneously the common regions from multiple images. On the one hand, it does not need to use a large amount of labeled data to train in advance. On the other hand, it utilizes the consistency constraint between images to better obtain the object information. This idea can generate better performance than the traditional one did, resulting in many methods related to object co-segmentation. This paper reviews some classic and effective object co-segmentation methods, including saliency-based approaches, joint-processing-based approaches, graph-based approaches, and others. For different methods, we select two or three related models to elaborate, such as a model based on random walks. Moreover, in order to exhibit and evaluate these methods objectively and comprehensively, we not only summarize them in the form of flowcharts and algorithm summaries, but also compare their performance with visualization methods and evaluation metrics, such as intersection-over-union, consistency error, and precision-recall rate. From the experiment, we also attempt to clarify and analyze the existing problems. Finally, we point out the challenges and directions and open new venues for future researchers in the field.https://ieeexplore.ieee.org/document/8715354/Computer visionsemantic segmentationobject co-segmentationjoint processingsaliencymodel evaluation
collection DOAJ
language English
format Article
sources DOAJ
author Zhoumin Lu
Haiping Xu
Genggeng Liu
spellingShingle Zhoumin Lu
Haiping Xu
Genggeng Liu
A Survey of Object Co-Segmentation
IEEE Access
Computer vision
semantic segmentation
object co-segmentation
joint processing
saliency
model evaluation
author_facet Zhoumin Lu
Haiping Xu
Genggeng Liu
author_sort Zhoumin Lu
title A Survey of Object Co-Segmentation
title_short A Survey of Object Co-Segmentation
title_full A Survey of Object Co-Segmentation
title_fullStr A Survey of Object Co-Segmentation
title_full_unstemmed A Survey of Object Co-Segmentation
title_sort survey of object co-segmentation
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description It is widely acknowledged that object segmentation is a significant research field for computer vision and a key process for many other visual tasks. In the past unsupervised single-image segmentation, there are often cases where the segmentation result is not good. In the current supervised single-image segmentation, it is necessary to rely on a large number of data annotations and long-term training of the model. Then, people attempted to segment simultaneously the common regions from multiple images. On the one hand, it does not need to use a large amount of labeled data to train in advance. On the other hand, it utilizes the consistency constraint between images to better obtain the object information. This idea can generate better performance than the traditional one did, resulting in many methods related to object co-segmentation. This paper reviews some classic and effective object co-segmentation methods, including saliency-based approaches, joint-processing-based approaches, graph-based approaches, and others. For different methods, we select two or three related models to elaborate, such as a model based on random walks. Moreover, in order to exhibit and evaluate these methods objectively and comprehensively, we not only summarize them in the form of flowcharts and algorithm summaries, but also compare their performance with visualization methods and evaluation metrics, such as intersection-over-union, consistency error, and precision-recall rate. From the experiment, we also attempt to clarify and analyze the existing problems. Finally, we point out the challenges and directions and open new venues for future researchers in the field.
topic Computer vision
semantic segmentation
object co-segmentation
joint processing
saliency
model evaluation
url https://ieeexplore.ieee.org/document/8715354/
work_keys_str_mv AT zhouminlu asurveyofobjectcosegmentation
AT haipingxu asurveyofobjectcosegmentation
AT genggengliu asurveyofobjectcosegmentation
AT zhouminlu surveyofobjectcosegmentation
AT haipingxu surveyofobjectcosegmentation
AT genggengliu surveyofobjectcosegmentation
_version_ 1724190481012752384