2020
DOI: 10.1155/2020/8360361
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High-Resolution Remote-Sensing Image-Change Detection Based on Morphological Attribute Profiles and Decision Fusion

Abstract: Change detection (CD) is essential for accurate understanding of land surface changes with multitemporal Earth observation data. Due to the great advantages in spatial information modeling, Morphological Attribute Profiles (MAPs) are becoming increasingly popular for improving the recognition ability in CD applications. However, most of the MAPs-based CD methods are implemented by setting the scale parameters of Attribute Profiles (APs) manually and ignoring the uncertainty of change information from different… Show more

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Cited by 6 publications
(5 citation statements)
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“…Other CNN variants architectures are proposed in [1], [27], [50], [59], [60] which use CWNN, deep CVA, and self-paced learning, respectively. In addition, complex architectures that use Markov chains, spectral unmixing, regression-based learning, and decision fusion are mentioned in [61]. These secondary methods can be used to assemble CNNs for multi-algorithmic applications.…”
Section: Discussion and Summarymentioning
confidence: 99%
“…Other CNN variants architectures are proposed in [1], [27], [50], [59], [60] which use CWNN, deep CVA, and self-paced learning, respectively. In addition, complex architectures that use Markov chains, spectral unmixing, regression-based learning, and decision fusion are mentioned in [61]. These secondary methods can be used to assemble CNNs for multi-algorithmic applications.…”
Section: Discussion and Summarymentioning
confidence: 99%
“…On the other hand, the traditional decision-making method of taking the union directly for the DAPs corresponding to different attributes ignores the evidential conflict and redundant information. Therefore, based on Dempster-Shafer (D-S) evidence theory, this paper proposed an unsupervised decision fusion framework combining ACGA-DAPs and image segmentation [5].…”
Section: Construct An Unsupervised Decision Fusion Frameworkmentioning
confidence: 99%
“…In recent years, morphological attribute profiles (MAPs) have been proven to have a strong ability to detect buildings in complex urban backgrounds, which has been one of the most effective spatial structure modelling methods for HRRS images. The morphological feature set of local area constructed by MAPs can be used to realize the multi-attribute and multi-scale expression of different ground objects, thus significantly improving the separability of buildings and other ground objects [5][6][7]. However, the following limitations must be overcome to realize high-precision, unsupervised building detection based on MAPs: (1) The potential building pixels are directly determined by the differential attribute profiles (DAPs) extracted from the differential of neighboring attribute profiles (APs), and morphological attribute profile (MAP) theory does not give a scale parameter setting using clear rules, so the requirement according to the scale of the original image is used to construct (on an adaptive basis) a reasonable parameter set.…”
Section: Introductionmentioning
confidence: 99%
“…In real recognition, the target is generally stored in the environment will not be so ideal. There will be a series of problems, such as occlusion interference, which makes the target detection face new challenges [4][5].…”
Section: Introductionmentioning
confidence: 99%