Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning

Cross-domain ground-based cloud classification is a challenging issue as the appearance of cloud images from different cloud databases possesses extreme variations. Two fundamental problems which are essential for cross-domain ground-based cloud classification are feature representation and similari...

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Published in:Remote Sensing
Main Authors: Zhang, Zhong, Li, Donghong, Liu, Shuang, Xiao, Baihua, Cao, Xiaozhong
Format: Article in Journal/Newspaper
Language:English
Published: 2018
Subjects:
DML
Online Access:http://ir.ia.ac.cn/handle/173211/21949
https://doi.org/10.3390/rs10010008
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spelling ftchiacadsccasia:oai:ir.ia.ac.cn:173211/21949 2023-07-02T03:32:05+02:00 Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning Zhang, Zhong Li, Donghong Liu, Shuang Xiao, Baihua Cao, Xiaozhong 2018 http://ir.ia.ac.cn/handle/173211/21949 https://doi.org/10.3390/rs10010008 英语 eng REMOTE SENSING http://ir.ia.ac.cn/handle/173211/21949 doi:10.3390/rs10010008 Ground-based Cloud Classification Machine Learning Transfer Of Local Features Discriminative Metric Learning Science & Technology Technology OBJECT RECOGNITION FEATURE-EXTRACTION IMAGES DISTANCE PATTERN CORTEX Remote Sensing Article 期刊论文 2018 ftchiacadsccasia https://doi.org/10.3390/rs10010008 2023-06-13T16:18:05Z Cross-domain ground-based cloud classification is a challenging issue as the appearance of cloud images from different cloud databases possesses extreme variations. Two fundamental problems which are essential for cross-domain ground-based cloud classification are feature representation and similarity measurement. In this paper, we propose an effective feature representation called transfer of local features (TLF), and measurement method called discriminative metric learning (DML). The TLF is a generalized representation framework that can integrate various kinds of local features, e.g., local binary patterns (LBP), local ternary patterns (LTP) and completed LBP (CLBP). In order to handle domain shift, such as variations of illumination, image resolution, capturing location, occlusion and so on, the TLF mines the maximum response in regions to make a stable representation for domain variations. We also propose to learn a discriminant metric, simultaneously. We make use of sample pairs and the relationship among cloud classes to learn the distance metric. Furthermore, in order to improve the practicability of the proposed method, we replace the original cloud images with the convolutional activation maps which are then applied to TLF and DML. The proposed method has been validated on three cloud databases which are collected in China alone, provided by Chinese Academy of Meteorological Sciences (CAMS), Meteorological Observation Centre (MOC), and Institute of Atmospheric Physics (IAP). The classification accuracies outperform the state-of-the-art methods. Article in Journal/Newspaper DML Institute of Automation: CASIA OpenIR (Chinese Academy of Sciences) Remote Sensing 10 2 8
institution Open Polar
collection Institute of Automation: CASIA OpenIR (Chinese Academy of Sciences)
op_collection_id ftchiacadsccasia
language English
topic Ground-based Cloud Classification
Machine Learning
Transfer Of Local Features
Discriminative Metric Learning
Science & Technology
Technology
OBJECT RECOGNITION
FEATURE-EXTRACTION
IMAGES
DISTANCE
PATTERN
CORTEX
Remote Sensing
spellingShingle Ground-based Cloud Classification
Machine Learning
Transfer Of Local Features
Discriminative Metric Learning
Science & Technology
Technology
OBJECT RECOGNITION
FEATURE-EXTRACTION
IMAGES
DISTANCE
PATTERN
CORTEX
Remote Sensing
Zhang, Zhong
Li, Donghong
Liu, Shuang
Xiao, Baihua
Cao, Xiaozhong
Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
topic_facet Ground-based Cloud Classification
Machine Learning
Transfer Of Local Features
Discriminative Metric Learning
Science & Technology
Technology
OBJECT RECOGNITION
FEATURE-EXTRACTION
IMAGES
DISTANCE
PATTERN
CORTEX
Remote Sensing
description Cross-domain ground-based cloud classification is a challenging issue as the appearance of cloud images from different cloud databases possesses extreme variations. Two fundamental problems which are essential for cross-domain ground-based cloud classification are feature representation and similarity measurement. In this paper, we propose an effective feature representation called transfer of local features (TLF), and measurement method called discriminative metric learning (DML). The TLF is a generalized representation framework that can integrate various kinds of local features, e.g., local binary patterns (LBP), local ternary patterns (LTP) and completed LBP (CLBP). In order to handle domain shift, such as variations of illumination, image resolution, capturing location, occlusion and so on, the TLF mines the maximum response in regions to make a stable representation for domain variations. We also propose to learn a discriminant metric, simultaneously. We make use of sample pairs and the relationship among cloud classes to learn the distance metric. Furthermore, in order to improve the practicability of the proposed method, we replace the original cloud images with the convolutional activation maps which are then applied to TLF and DML. The proposed method has been validated on three cloud databases which are collected in China alone, provided by Chinese Academy of Meteorological Sciences (CAMS), Meteorological Observation Centre (MOC), and Institute of Atmospheric Physics (IAP). The classification accuracies outperform the state-of-the-art methods.
format Article in Journal/Newspaper
author Zhang, Zhong
Li, Donghong
Liu, Shuang
Xiao, Baihua
Cao, Xiaozhong
author_facet Zhang, Zhong
Li, Donghong
Liu, Shuang
Xiao, Baihua
Cao, Xiaozhong
author_sort Zhang, Zhong
title Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
title_short Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
title_full Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
title_fullStr Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
title_full_unstemmed Cross-Domain Ground-Based Cloud Classification Based on Transfer of Local Features and Discriminative Metric Learning
title_sort cross-domain ground-based cloud classification based on transfer of local features and discriminative metric learning
publishDate 2018
url http://ir.ia.ac.cn/handle/173211/21949
https://doi.org/10.3390/rs10010008
genre DML
genre_facet DML
op_relation REMOTE SENSING
http://ir.ia.ac.cn/handle/173211/21949
doi:10.3390/rs10010008
op_doi https://doi.org/10.3390/rs10010008
container_title Remote Sensing
container_volume 10
container_issue 2
container_start_page 8
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