Skip navigation
Use este identificador para citar ou linkar para este item: http://repositorio2.unb.br/jspui/handle/10482/16202
Arquivos associados a este item:
Arquivo Descrição TamanhoFormato 
ARTIGO_RadiometricNormalizationTemporal.pdf8,11 MBAdobe PDFVisualizar/Abrir
Título: Radiometric normalization of temporal images combining automatic detection of pseudo-invariant features from the distance and similarity spectral measures, density scatterplot analysis, and robust regression
Autor(es): Carvalho Júnior, Osmar Abílio de
Guimarães, Renato Fontes
Silva, Nilton Correia
Gillespie, Alan R.
Gomes, Roberto Arnaldo Trancoso
Silva, Cristiano Rosa
Carvalho, Ana Paula Ferreira de
Assunto: Spectral correlation mapper
Spectral angle mapper
Change-detection
Mahalanobis distance
Data de publicação: 2013
Editora: MDPI - Multidisciplinar Digital Publishing
Referência: CARVALHO JÚNIOR, Osmar Abílio de et al. Radiometric normalization of temporal images combining automatic detection of pseudo-invariant features from the distance and similarity spectral measures, density scatterplot analysis, and robust regression. Remote Sensing, v. 5, p. 2763-2794, 2013. Disponível em: <http://www.mdpi.com/2072-4292/5/6/2763>. Acesso em: 25 ago. 2014.
Resumo: Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric conditions. Eartli-sun distance, detector calibration, illumination, and viewing angles). These unwanted effects must be removed for radiometric consistency among temporal images, leaving only land-leaving radiances, for optimum change detection A variety of relative radiometric correction techniques were developed for the correction or rectification of images, of the same area, through use of reference targets whose reflectance do not change significantly with time, i.e., pseudo-invariant features (PEFs). This paper proposes a new technique for radiometric normalization, which uses three sequential methods for an accurate PEFs selection: spectral measures of temporal data (spectral distance and similarity), density scatter plot analysis (ridge method), and robust regression. The spectral measures used are the spectral angle (Spectral Angle Mapper, SAM), spectral correlation (Spectral Correlation Mapper. SCM), and Euclidean distance. The spectral measures between the spectra at times tl and t2 and are calculated for each pixel. After classification using threshold values, it is possible to define points with the same spectral behavior, including PEFs. The distance and similarity measures are complementary and can be calculated together. The ridge method uses a density plot generated from unages acquired on different dates for the selection of PEFs. In a density plot, the invariant pixels, together, form a higli-density ridge, while variant pixels (clouds and land cover changes) are spread, having low density, facilitating its exclusion. Finally, the selected PEFs are subjected to a robust regression (M-estimate) between pairs of temporal bands for the detection and elimination of outliers, and to obtain the optimal linear equation for a given set of target points. The robust regression is insensitive to outliers, i.e.. observation that appears to deviate strongly from the rest of the data in which it occurs, and as in our case, change areas. New sequential methods enable one to select by different attributes, a number of invariant targets over the brightness range of the images.
Licença: Remote Sensing - © 2013 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
Aparece nas coleções:Artigos publicados em periódicos e afins

Mostrar registro completo do item Visualizar estatísticas



Os itens no repositório estão protegidos por copyright, com todos os direitos reservados, salvo quando é indicado o contrário.