Change detection with cross enhancement of high‐ and low‐level change‐related features

Abstract Change detection (CD) is a fundamental yet challenging problem, which aims at detecting changed object in two observations. Recent CD methods are designed based on the off‐the‐shelf semantic segmentation network architectures, which is not optimal for extracting and using change‐related fea...

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Main Authors: Rui Huang, Yan Xing, Mo Zhou, Ruofei Wang
Format: Article
Language:English
Published: Wiley 2021-11-01
Series:IET Image Processing
Subjects:
Online Access:https://doi.org/10.1049/ipr2.12334
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spelling doaj-6dda0f6c3b1e45aa9f344248c30751622021-10-04T12:09:57ZengWileyIET Image Processing1751-96591751-96672021-11-0115133380339110.1049/ipr2.12334Change detection with cross enhancement of high‐ and low‐level change‐related featuresRui Huang0Yan Xing1Mo Zhou2Ruofei Wang3School of Computer Science and Technology Civil Aviation University of China Tianjin ChinaSchool of Computer Science and Technology Civil Aviation University of China Tianjin ChinaSchool of Computer Science and Technology Civil Aviation University of China Tianjin ChinaSchool of Computer Science and Technology Civil Aviation University of China Tianjin ChinaAbstract Change detection (CD) is a fundamental yet challenging problem, which aims at detecting changed object in two observations. Recent CD methods are designed based on the off‐the‐shelf semantic segmentation network architectures, which is not optimal for extracting and using change‐related features. In this paper, a novel CD network architecture is proposed, including change‐related feature extraction, cross feature enhancement, and multi‐level supervision. Absolute difference of the features of different convolutional layers is first computed from a Unet‐like network for two observations. The features are partitioned into high‐ and low‐level features according to their functionalities. Then the high‐ and low‐level features are recurrently refined by cross feature enhancement to increase the representational ability of the features. The network learns change‐related features with multi‐level supervisions. The final CD result can be obtained by fusing multiple predictions. Experimental results on three CD benchmark datasets indicate the superiority of the authors' method when compared with six state‐of‐the‐art deep learning‐based CD methods.https://doi.org/10.1049/ipr2.12334absolute differencechange detectionchange‐related featurecross feature enhancement
collection DOAJ
language English
format Article
sources DOAJ
author Rui Huang
Yan Xing
Mo Zhou
Ruofei Wang
spellingShingle Rui Huang
Yan Xing
Mo Zhou
Ruofei Wang
Change detection with cross enhancement of high‐ and low‐level change‐related features
IET Image Processing
absolute difference
change detection
change‐related feature
cross feature enhancement
author_facet Rui Huang
Yan Xing
Mo Zhou
Ruofei Wang
author_sort Rui Huang
title Change detection with cross enhancement of high‐ and low‐level change‐related features
title_short Change detection with cross enhancement of high‐ and low‐level change‐related features
title_full Change detection with cross enhancement of high‐ and low‐level change‐related features
title_fullStr Change detection with cross enhancement of high‐ and low‐level change‐related features
title_full_unstemmed Change detection with cross enhancement of high‐ and low‐level change‐related features
title_sort change detection with cross enhancement of high‐ and low‐level change‐related features
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-11-01
description Abstract Change detection (CD) is a fundamental yet challenging problem, which aims at detecting changed object in two observations. Recent CD methods are designed based on the off‐the‐shelf semantic segmentation network architectures, which is not optimal for extracting and using change‐related features. In this paper, a novel CD network architecture is proposed, including change‐related feature extraction, cross feature enhancement, and multi‐level supervision. Absolute difference of the features of different convolutional layers is first computed from a Unet‐like network for two observations. The features are partitioned into high‐ and low‐level features according to their functionalities. Then the high‐ and low‐level features are recurrently refined by cross feature enhancement to increase the representational ability of the features. The network learns change‐related features with multi‐level supervisions. The final CD result can be obtained by fusing multiple predictions. Experimental results on three CD benchmark datasets indicate the superiority of the authors' method when compared with six state‐of‐the‐art deep learning‐based CD methods.
topic absolute difference
change detection
change‐related feature
cross feature enhancement
url https://doi.org/10.1049/ipr2.12334
work_keys_str_mv AT ruihuang changedetectionwithcrossenhancementofhighandlowlevelchangerelatedfeatures
AT yanxing changedetectionwithcrossenhancementofhighandlowlevelchangerelatedfeatures
AT mozhou changedetectionwithcrossenhancementofhighandlowlevelchangerelatedfeatures
AT ruofeiwang changedetectionwithcrossenhancementofhighandlowlevelchangerelatedfeatures
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