A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery
The use of Very High Spatial Resolution (VHSR) imagery in remote sensing applications is nowadays a current practice whenever fine-scale monitoring of the earth’s surface is concerned. VHSR Land Cover classification, in particular, is currently a well-established tool to support decisions...
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doaj-73e4433de5484a5794d07771791c66042020-11-24T21:46:38ZengMDPI AGRemote Sensing2072-42922018-11-011011174610.3390/rs10111746rs10111746A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS ImageryRaffaele Gaetano0Dino Ienco1Kenji Ose2Remi Cresson3CIRAD, UMR TETIS, Maison de la Télédétection, 500 Rue J.-F. Breton, F-34000 Montpellier, FranceUMR TETIS, IRSTEA, University of Montpellier, F-34000 Montpellier, FranceUMR TETIS, IRSTEA, University of Montpellier, F-34000 Montpellier, FranceUMR TETIS, IRSTEA, University of Montpellier, F-34000 Montpellier, FranceThe use of Very High Spatial Resolution (VHSR) imagery in remote sensing applications is nowadays a current practice whenever fine-scale monitoring of the earth’s surface is concerned. VHSR Land Cover classification, in particular, is currently a well-established tool to support decisions in several domains, including urban monitoring, agriculture, biodiversity, and environmental assessment. Additionally, land cover classification can be employed to annotate VHSR imagery with the aim of retrieving spatial statistics or areas with similar land cover. Modern VHSR sensors provide data at multiple spatial and spectral resolutions, most commonly as a couple of a higher-resolution single-band panchromatic (PAN) and a coarser multispectral (MS) imagery. In the typical land cover classification workflow, the multi-resolution input is preprocessed to generate a single multispectral image at the highest resolution available by means of a pan-sharpening process. Recently, deep learning approaches have shown the advantages of avoiding data preprocessing by letting machine learning algorithms automatically transform input data to best fit the classification task. Following this rationale, we here propose a new deep learning architecture to jointly use PAN and MS imagery for a direct classification without any prior image sharpening or resampling process. Our method, namely <inline-formula> <math display="inline"> <semantics> <mrow> <mi>M</mi> <mi>u</mi> <mi>l</mi> <mi>t</mi> <mi>i</mi> <mi>R</mi> <mi>e</mi> <mi>s</mi> <mi>o</mi> <mi>L</mi> <mi>C</mi> <mi>C</mi> </mrow> </semantics> </math> </inline-formula>, consists of a two-branch end-to-end network which extracts features from each source at their native resolution and lately combine them to perform land cover classification at the PAN resolution. Experiments are carried out on two real-world scenarios over large areas with contrasted land cover characteristics. The experimental results underline the quality of our method while the characteristics of the proposed scenarios underline the applicability and the generality of our strategy in operational settings.https://www.mdpi.com/2072-4292/10/11/1746deep learningsingle-sensor multi-resolution data fusionimage classificationland cover mappingimage retrieval by land cover |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Raffaele Gaetano Dino Ienco Kenji Ose Remi Cresson |
spellingShingle |
Raffaele Gaetano Dino Ienco Kenji Ose Remi Cresson A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery Remote Sensing deep learning single-sensor multi-resolution data fusion image classification land cover mapping image retrieval by land cover |
author_facet |
Raffaele Gaetano Dino Ienco Kenji Ose Remi Cresson |
author_sort |
Raffaele Gaetano |
title |
A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery |
title_short |
A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery |
title_full |
A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery |
title_fullStr |
A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery |
title_full_unstemmed |
A Two-Branch CNN Architecture for Land Cover Classification of PAN and MS Imagery |
title_sort |
two-branch cnn architecture for land cover classification of pan and ms imagery |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2018-11-01 |
description |
The use of Very High Spatial Resolution (VHSR) imagery in remote sensing applications is nowadays a current practice whenever fine-scale monitoring of the earth’s surface is concerned. VHSR Land Cover classification, in particular, is currently a well-established tool to support decisions in several domains, including urban monitoring, agriculture, biodiversity, and environmental assessment. Additionally, land cover classification can be employed to annotate VHSR imagery with the aim of retrieving spatial statistics or areas with similar land cover. Modern VHSR sensors provide data at multiple spatial and spectral resolutions, most commonly as a couple of a higher-resolution single-band panchromatic (PAN) and a coarser multispectral (MS) imagery. In the typical land cover classification workflow, the multi-resolution input is preprocessed to generate a single multispectral image at the highest resolution available by means of a pan-sharpening process. Recently, deep learning approaches have shown the advantages of avoiding data preprocessing by letting machine learning algorithms automatically transform input data to best fit the classification task. Following this rationale, we here propose a new deep learning architecture to jointly use PAN and MS imagery for a direct classification without any prior image sharpening or resampling process. Our method, namely <inline-formula> <math display="inline"> <semantics> <mrow> <mi>M</mi> <mi>u</mi> <mi>l</mi> <mi>t</mi> <mi>i</mi> <mi>R</mi> <mi>e</mi> <mi>s</mi> <mi>o</mi> <mi>L</mi> <mi>C</mi> <mi>C</mi> </mrow> </semantics> </math> </inline-formula>, consists of a two-branch end-to-end network which extracts features from each source at their native resolution and lately combine them to perform land cover classification at the PAN resolution. Experiments are carried out on two real-world scenarios over large areas with contrasted land cover characteristics. The experimental results underline the quality of our method while the characteristics of the proposed scenarios underline the applicability and the generality of our strategy in operational settings. |
topic |
deep learning single-sensor multi-resolution data fusion image classification land cover mapping image retrieval by land cover |
url |
https://www.mdpi.com/2072-4292/10/11/1746 |
work_keys_str_mv |
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