Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism

Inspired by the boosting technique for detecting objects, this paper proposes a cascade structure with a resurrection mechanism to establish keypoint mappings on multispectral images. The cascade structure is composed of four steps by utilizing best bin first (BBF), color and intensity distribution...

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Main Authors: Yong Li, Jing Jing, Hongbin Jin, Wei Qiao
Format: Article
Language:English
Published: MDPI AG 2015-05-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/15/5/11769
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spelling doaj-04a0e3a684464964aa414cb3c71498a32020-11-24T21:54:10ZengMDPI AGSensors1424-82202015-05-01155117691178610.3390/s150511769s150511769Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection MechanismYong Li0Jing Jing1Hongbin Jin2Wei Qiao3School of Electronic Engineering, Beijing University of Posts and Telecommunications, Rd. Xitucheng 10#, Beijing 100876, ChinaSchool of Electronic Engineering, Beijing University of Posts and Telecommunications, Rd. Xitucheng 10#, Beijing 100876, ChinaSchool of Electronic Engineering, Beijing University of Posts and Telecommunications, Rd. Xitucheng 10#, Beijing 100876, ChinaSchool of Electronic Engineering, Beijing University of Posts and Telecommunications, Rd. Xitucheng 10#, Beijing 100876, ChinaInspired by the boosting technique for detecting objects, this paper proposes a cascade structure with a resurrection mechanism to establish keypoint mappings on multispectral images. The cascade structure is composed of four steps by utilizing best bin first (BBF), color and intensity distribution of segment (CIDS), global information and the RANSAC process to remove outlier keypoint matchings. Initial keypoint mappings are built with the descriptors associated with keypoints; then, at each step, only a small number of keypoint mappings of a high confidence are classified to be incorrect. The unclassified keypoint mappings will be passed on to subsequent steps for determining whether they are correct. Due to the drawback of a classification rule, some correct keypoint mappings may be misclassified as incorrect at a step. Observing this, we design a resurrection mechanism, so that they will be reconsidered and evaluated by the rules utilized in subsequent steps. Experimental results show that the proposed cascade structure combined with the resurrection mechanism can effectively build more reliable keypoint mappings on multispectral images than existing methods.http://www.mdpi.com/1424-8220/15/5/11769multispectralcascade structureresurrection mechanism
collection DOAJ
language English
format Article
sources DOAJ
author Yong Li
Jing Jing
Hongbin Jin
Wei Qiao
spellingShingle Yong Li
Jing Jing
Hongbin Jin
Wei Qiao
Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
Sensors
multispectral
cascade structure
resurrection mechanism
author_facet Yong Li
Jing Jing
Hongbin Jin
Wei Qiao
author_sort Yong Li
title Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
title_short Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
title_full Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
title_fullStr Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
title_full_unstemmed Building Keypoint Mappings on Multispectral Images by a Cascade of Classifiers with a Resurrection Mechanism
title_sort building keypoint mappings on multispectral images by a cascade of classifiers with a resurrection mechanism
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2015-05-01
description Inspired by the boosting technique for detecting objects, this paper proposes a cascade structure with a resurrection mechanism to establish keypoint mappings on multispectral images. The cascade structure is composed of four steps by utilizing best bin first (BBF), color and intensity distribution of segment (CIDS), global information and the RANSAC process to remove outlier keypoint matchings. Initial keypoint mappings are built with the descriptors associated with keypoints; then, at each step, only a small number of keypoint mappings of a high confidence are classified to be incorrect. The unclassified keypoint mappings will be passed on to subsequent steps for determining whether they are correct. Due to the drawback of a classification rule, some correct keypoint mappings may be misclassified as incorrect at a step. Observing this, we design a resurrection mechanism, so that they will be reconsidered and evaluated by the rules utilized in subsequent steps. Experimental results show that the proposed cascade structure combined with the resurrection mechanism can effectively build more reliable keypoint mappings on multispectral images than existing methods.
topic multispectral
cascade structure
resurrection mechanism
url http://www.mdpi.com/1424-8220/15/5/11769
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AT jingjing buildingkeypointmappingsonmultispectralimagesbyacascadeofclassifierswitharesurrectionmechanism
AT hongbinjin buildingkeypointmappingsonmultispectralimagesbyacascadeofclassifierswitharesurrectionmechanism
AT weiqiao buildingkeypointmappingsonmultispectralimagesbyacascadeofclassifierswitharesurrectionmechanism
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