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1. Identificação
Tipo de ReferênciaArtigo em Revista Científica (Journal Article)
Siteplutao.sid.inpe.br
Código do Detentorisadg {BR SPINPE} ibi 8JMKD3MGPCW/3DT298S
IdentificadorJ8LNKAN8RW/3C649CL
Repositóriodpi.inpe.br/plutao/2012/06.21.21.48   (acesso restrito)
Última Atualização2012:08.14.14.06.11 (UTC) administrator
Repositório de Metadadosdpi.inpe.br/plutao/2012/06.21.21.48.06
Última Atualização dos Metadados2018:06.05.00.01.51 (UTC) administrator
DOI10.1016/j.isprsjprs.2012.03.010
ISSN0924-2716
1872-8235
Rótulolattes: 9840759640842299 4 LiLuMorDutBat:2012:CoAnAL
Chave de CitaçãoLiLuMorDutBat:2012:CoAnAL
TítuloA comparative analysis of ALOS PALSAR L-band and RADARSAT-2 C-band data for land-cover classification in a tropical moist region
Ano2012
MêsJune
Data de Acesso13 maio 2024
Tipo SecundárioPRE PI
Número de Arquivos1
Tamanho2059 KiB
2. Contextualização
Autor1 Li, Guiying
2 Lu, Dengsheng
3 Moran, Emilio
4 Dutra, Luciano Vieira
5 Batistella, Mateus
Identificador de Curriculo1
2
3
4 8JMKD3MGP5W/3C9JHMA
Grupo1
2
3
4 DPI-OBT-INPE-MCTI-GOV-BR
Afiliação1 Indiana University, Anthropological Center for Training and Research on Global Environmental Change, Bloomington, Indiana 47405
2 Indiana University, Anthropological Center for Training and Research on Global Environmental Change, Bloomington, Indiana 47405
3 Indiana University, Anthropological Center for Training and Research on Global Environmental Change, Bloomington, Indiana 47405
4 Instituto Nacional de Pesquisas Espaciais (INPE)
Endereço de e-Mail do Autor1
2
3
4 dutra@dpi.inpe.br
Endereço de e-Maildutra@dpi.inpe.br
RevistaISPRS Journal of Photogrammetry and Remote Sensing
Volume70
Páginas26-38
Nota SecundáriaA1_CIÊNCIAS_AGRÁRIAS_I A2_ECOLOGIA_E_MEIO_AMBIENTE B1_ENGENHARIAS_IV A2_GEOCIÊNCIAS A1_INTERDISCIPLINAR
Histórico (UTC)2012-06-22 00:11:01 :: lattes -> administrator :: 2012
2012-07-26 23:15:52 :: administrator -> secretaria.cpa@dir.inpe.br :: 2012
2012-08-14 14:06:11 :: secretaria.cpa@dir.inpe.br -> administrator :: 2012
2018-06-05 00:01:51 :: administrator -> marciana :: 2012
3. Conteúdo e estrutura
É a matriz ou uma cópia?é a matriz
Estágio do Conteúdoconcluido
Transferível1
Tipo do ConteúdoExternal Contribution
Tipo de Versãopublisher
Palavras-ChaveALOS PALSAR
RADARSAT
Texture
Land-cover classification
Amazon
ResumoThis paper explores the use of ALOS (Advanced Land Observing Satellite) PALSARL-band (Phased Array type L-band Synthetic Aperture Radar) and RADARSAT-2 C-band data for land-cover classification in a tropical moist region. Transformed divergence was used to identify potential textural images which were calculated with the gray-level co-occurrence matrix method. The standard deviation of selected textural images and correlation coefficients between them were then used to determine the best combination of texture images for land-cover classification. Classification results based on different scenarios with maximum likelihood classifier were compared. Based on the identified best scenarios, different classification algorithms maximum likelihood classifier, classification tree analysis, Fuzzy ARTMAP (a neural-network method), k-nearest neighbor, object-based classification, and support vector machine were compared for examining which algorithm was suitable for land-cover classification in the tropical moist region. This research indicates that the combination of radiometric images and their textures provided considerably better classification accuracies than individual datasets. The L-band data provided much better landcover classification than C-band data but neither L-band nor C-band was suitable for fine land-cover classification system, no matter which classification algorithm was used. L-band data provided reasonably good classification accuracies for coarse land-cover classification system such as forest, succession, agropasture, water, wetland, and urban with an overall classification accuracy of 72.2%, but C-band data provided only 54.7%. Compared to the maximum likelihood classifier, both classification tree analysis and Fuzzy ARTMAP provided better performances, object-based classification and support vector machine had similar performances, and k-nearest neighbor performed poorly. More research should address the use of multitemporal radar data and the integration of radar and optical sensor data for improving land-cover classification.
ÁreaSRE
Arranjourlib.net > BDMCI > Fonds > Produção anterior à 2021 > DIDPI > A comparative analysis...
Conteúdo da Pasta docacessar
Conteúdo da Pasta sourcenão têm arquivos
Conteúdo da Pasta agreementnão têm arquivos
4. Condições de acesso e uso
Idiomaen
Arquivo AlvoGuiying_et_al_2012.pdf
Grupo de Usuáriosadministrator
lattes
marciana
secretaria.cpa@dir.inpe.br
Grupo de Leitoresadministrator
marciana
Visibilidadeshown
Política de Arquivamentodenypublisher denyfinaldraft24
Permissão de Leituradeny from all and allow from 150.163
Permissão de Atualizaçãonão transferida
5. Fontes relacionadas
Unidades Imediatamente Superiores8JMKD3MGPCW/3EQCCU5
Lista de Itens Citandosid.inpe.br/bibdigital/2013/09.09.15.05 2
DivulgaçãoWEBSCI; PORTALCAPES; MGA; COMPENDEX.
Acervo Hospedeirodpi.inpe.br/plutao@80/2008/08.19.15.01
6. Notas
Campos Vaziosalternatejournal archivist callnumber copyholder copyright creatorhistory descriptionlevel format isbn lineage mark mirrorrepository nextedition notes number orcid parameterlist parentrepositories previousedition previouslowerunit progress project rightsholder schedulinginformation secondarydate secondarykey session shorttitle sponsor subject tertiarymark tertiarytype typeofwork url
7. Controle da descrição
e-Mail (login)marciana
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