Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest

In this paper, the scientific outcomes of the 2016 Data Fusion Contest organized by the Image Analysis and Data Fusion Technical Committee of the IEEE Geoscience and Remote Sensing Society are discussed. The 2016 Contest was an open topic competition based on a multitemporal and multimodal dataset, which included a temporal pair of very high resolution panchromatic and multispectral Deimos-2 images and a video captured by the Iris camera on-board the International Space Station. The problems addressed and the techniques proposed by the participants to the Contest spanned across a rather broad range of topics, and mixed ideas and methodologies from the remote sensing, video processing, and computer vision. In particular, the winning team developed a deep learning method to jointly address spatial scene labeling and temporal activity modeling using the available image and video data. The second place team proposed a random field model to simultaneously perform coregistration of multitemporal data, semantic segmentation, and change detection. The methodological key ideas of both these approaches and the main results of the corresponding experimental validation are discussed in this paper.

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Bibliographic Details
Main Authors: Mou, L., Zhu, X., Vakalopoulou, M., Karantzalos, K., Paragios, N., Le Saux, B., Moser, G., Tuia, D.
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Change detection, convolutional neural networks (CNN), deep learning, image analysis and data fusion, multimodal, multiresolution, multisource, random fields, tracking, video from space,
Online Access:https://research.wur.nl/en/publications/multitemporal-very-high-resolution-from-space-outcome-of-the-2016
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spelling dig-wur-nl-wurpubs-5259202024-09-30 Mou, L. Zhu, X. Vakalopoulou, M. Karantzalos, K. Paragios, N. Le Saux, B. Moser, G. Tuia, D. Article/Letter to editor IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 10 (2017) 8 ISSN: 1939-1404 Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest 2017 In this paper, the scientific outcomes of the 2016 Data Fusion Contest organized by the Image Analysis and Data Fusion Technical Committee of the IEEE Geoscience and Remote Sensing Society are discussed. The 2016 Contest was an open topic competition based on a multitemporal and multimodal dataset, which included a temporal pair of very high resolution panchromatic and multispectral Deimos-2 images and a video captured by the Iris camera on-board the International Space Station. The problems addressed and the techniques proposed by the participants to the Contest spanned across a rather broad range of topics, and mixed ideas and methodologies from the remote sensing, video processing, and computer vision. In particular, the winning team developed a deep learning method to jointly address spatial scene labeling and temporal activity modeling using the available image and video data. The second place team proposed a random field model to simultaneously perform coregistration of multitemporal data, semantic segmentation, and change detection. The methodological key ideas of both these approaches and the main results of the corresponding experimental validation are discussed in this paper. en application/pdf https://research.wur.nl/en/publications/multitemporal-very-high-resolution-from-space-outcome-of-the-2016 10.1109/JSTARS.2017.2696823 https://edepot.wur.nl/422367 Change detection convolutional neural networks (CNN) deep learning image analysis and data fusion multimodal multiresolution multisource random fields tracking video from space (c) publisher Wageningen University & Research
institution WUR NL
collection DSpace
country Países bajos
countrycode NL
component Bibliográfico
access En linea
databasecode dig-wur-nl
tag biblioteca
region Europa del Oeste
libraryname WUR Library Netherlands
language English
topic Change detection
convolutional neural networks (CNN)
deep learning
image analysis and data fusion
multimodal
multiresolution
multisource
random fields
tracking
video from space
Change detection
convolutional neural networks (CNN)
deep learning
image analysis and data fusion
multimodal
multiresolution
multisource
random fields
tracking
video from space
spellingShingle Change detection
convolutional neural networks (CNN)
deep learning
image analysis and data fusion
multimodal
multiresolution
multisource
random fields
tracking
video from space
Change detection
convolutional neural networks (CNN)
deep learning
image analysis and data fusion
multimodal
multiresolution
multisource
random fields
tracking
video from space
Mou, L.
Zhu, X.
Vakalopoulou, M.
Karantzalos, K.
Paragios, N.
Le Saux, B.
Moser, G.
Tuia, D.
Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
description In this paper, the scientific outcomes of the 2016 Data Fusion Contest organized by the Image Analysis and Data Fusion Technical Committee of the IEEE Geoscience and Remote Sensing Society are discussed. The 2016 Contest was an open topic competition based on a multitemporal and multimodal dataset, which included a temporal pair of very high resolution panchromatic and multispectral Deimos-2 images and a video captured by the Iris camera on-board the International Space Station. The problems addressed and the techniques proposed by the participants to the Contest spanned across a rather broad range of topics, and mixed ideas and methodologies from the remote sensing, video processing, and computer vision. In particular, the winning team developed a deep learning method to jointly address spatial scene labeling and temporal activity modeling using the available image and video data. The second place team proposed a random field model to simultaneously perform coregistration of multitemporal data, semantic segmentation, and change detection. The methodological key ideas of both these approaches and the main results of the corresponding experimental validation are discussed in this paper.
format Article/Letter to editor
topic_facet Change detection
convolutional neural networks (CNN)
deep learning
image analysis and data fusion
multimodal
multiresolution
multisource
random fields
tracking
video from space
author Mou, L.
Zhu, X.
Vakalopoulou, M.
Karantzalos, K.
Paragios, N.
Le Saux, B.
Moser, G.
Tuia, D.
author_facet Mou, L.
Zhu, X.
Vakalopoulou, M.
Karantzalos, K.
Paragios, N.
Le Saux, B.
Moser, G.
Tuia, D.
author_sort Mou, L.
title Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
title_short Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
title_full Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
title_fullStr Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
title_full_unstemmed Multitemporal Very High Resolution From Space: Outcome of the 2016 IEEE GRSS Data Fusion Contest
title_sort multitemporal very high resolution from space: outcome of the 2016 ieee grss data fusion contest
url https://research.wur.nl/en/publications/multitemporal-very-high-resolution-from-space-outcome-of-the-2016
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