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Dive into the research topics where Hermann Johann Heinrich Kux is active.

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Featured researches published by Hermann Johann Heinrich Kux.


Remote Sensing | 2011

Machine Learning Comparison between WorldView-2 and QuickBird-2-Simulated Imagery Regarding Object-Based Urban Land Cover Classification

Tessio Novack; Thomas Esch; Hermann Johann Heinrich Kux; Uwe Stilla

The objective of this study is to compare WorldView-2 (WV-2) and QuickBird-2-simulated (QB-2) imagery regarding their potential for object-based urban land cover classification. Optimal segmentation parameters were automatically found for each data set and the obtained results were quantitatively compared and discussed. Four different feature selection algorithms were used in order to verify to which data set the most relevant object-based features belong to. Object-based classifications were performed with four different supervised algorithms applied to each data set and the obtained accuracies and model performances indexes were compared. Segmentation experiments carried out involving bands exclusively available in the WV-2 sensor generated segments slightly more similar to our reference segments (only about 0.23 discrepancy). Fifty seven percent of the different selected features and 53% of all the 80 selections refer to features that can only be calculated with the additional bands of the WV-2 sensor. On the other hand, 57% of the most relevant features and 63% of the second most relevant features can also be calculated considering only the QB-2 bands. In 10 out of 16 classifications, higher Kappa values were achieved when features related to the additional bands of the WV-2 sensor were also considered. In most cases, classifications carried out with the 8-band-related features generated less complex and more efficient models than those generated only with QB-2 band-related features. Our results lead to the conclusion that spectrally similar classes like ceramic tile roofs and bare soil, as well as asphalt and dark asbestos roofs can be better distinguished when the additional bands of the WV-2 sensor are used throughout the object-based classification process.


Journal of remote sensing | 2012

Land-cover classification of an intra-urban environment using high-resolution images and object-based image analysis

Carolina Moutinho Duque de Pinho; Leila Maria Garcia Fonseca; Thales Sehn Korting; Cláudia Maria de Almeida; Hermann Johann Heinrich Kux

Detailed, up-to-date information on intra-urban land cover is important for urban planning and management. Differentiation between permeable and impermeable land, for instance, provides data for surface run-off estimates and flood prevention, whereas identification of vegetated areas enables studies of urban micro-climates. In place of maps, high-resolution images, such as those from the satellites IKONOS II, Quickbird, Orbview and WorldView II, can be used after processing. Object-based image analysis (OBIA) is a well-established method for classifying high-resolution images of urban areas. Despite the large number of previous studies of OBIA in the context of intra-urban analysis, there are many issues in this area that are still open to discussion and resolution. Intra-urban analysis using OBIA can be lengthy and complex because of the processing difficulties related to image segmentation, the large number of object attributes to be resolved and the many different methods needed to classify various image objects. To overcome these issues, we performed an experiment consisting of land-cover mapping based on an OBIA approach using an IKONOS II image of a southern sector of São José dos Campos city (covering an area of 12 km2 with 50 neighbourhoods), which is located in São Paulo State in south-eastern Brazil. This area contains various occupation and land-use patterns, and it therefore contains a wide range of intra-urban targets. To generate the land-cover map, we proposed an OBIA-based processing framework that combines multi-resolution segmentation, data mining and hierarchical network techniques. The intra-urban land-cover map was then evaluated through an object-based error matrix, and classification accuracy indices were obtained. The final classification, with 11 classes, achieved a global accuracy of 71.91%.


Journal of remote sensing | 2014

A knowledge-based, transferable approach for block-based urban land-use classification

Tessio Novack; Hermann Johann Heinrich Kux; Raul Queiroz Feitosa; Gilson Alexandre Ostwald Pedro da Costa

In this work we propose a knowledge-based approach for land-use classification of city blocks through the automatic interpretation of very-high-resolution remote-sensing imagery. Our approach is founded on geographic object-based image analysis (GEOBIA) concepts and is concerned with transferability across distinct knowledge representation formalisms. This paper therefore investigates the viability of translating a high-level description of the interpretation problem into the particular knowledge representation structures and interpretation strategies of two different software platforms, namely the proprietary Definiens Developer system and the open-source InterIMAGE system. Initially, textual descriptions of the land-use classes of interest were created by photo interpreters. Then, generic class descriptions were defined as a system-independent knowledge model, which was subsequently translated into interpretation projects in the different systems. Altogether 49 blocks located on two different test-sites in the city of São Paulo (Brazil) were considered in the experiments. Although the classification results from the Definiens Developer system were slightly better than those obtained with the InterIMAGE system, we concluded that both systems have been shown to be equally qualified to implement the target application properly through adaptation of the generic knowledge model.


urban remote sensing joint event | 2011

Feature selection analysis of WorldView-II data for similar urban objects distinction

Tessio Novack; Hermann Johann Heinrich Kux; Thomas Esch; Uwe Stilla

Feature selection methods have recently become very attractive to remote sensing researches as new object-based image analysis systems have made available tens or even hundreds of spectral, textural and geometrical features to be used in classification routines. The aim of this study is to investigate, based on different feature selection algorithms, whether the additional bands of the WorldView II sensor are indeed helpful for the discrimination of similar urban targets.


Archive | 2011

Estimation of Population Density of Census Sectors Using Remote Sensing Data and Spatial Regression

Tessio Novack; Hermann Johann Heinrich Kux; Corina da Costa Freitas

Assuming that urban planning aims the optimization of urban functioning and the well-being of citizens, questions like “how many people are living in the city?” and “where do they live?” become key issues. In this work we utilized landscape metrics generated by the FragStats software for the estimation of population density out of census sectors in the mega city of Sao Paulo, Brazil. The metrics were calculated over an image from the QuickBird II sensor classified by the Maximum Likelihood algorithm. The accuracy of the classified image was analyzed qualitatively. Ordinary linear regression models were generated and formal statistical tests applied. The residuals from each model had its spatial dependency analyzed by visualizing its LISA Maps and by the Global Moran index. Afterwards, spatial regression models were tried and a significant improvement was obtained in terms of spatial dependency reduction and increase of the prediction power of the models. For the sake of comparison, the use of dummy variables was also tried and it became a suitable option for eliminating spatial dependency of the residuals as well. The results proved that some landscape metrics obtained over high resolution images, classified by simple supervised methods, can predict well the population density at the area under study when using it as independent variable in spatial regression models.


ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences | 2012

OBJECT-BASED IMAGE ANALYSIS OF WORLDVIEW-2 SATELLITE DATA FOR THE CLASSIFICATION OF MANGROVE AREAS IN THE CITY OF SÃO LUÍS, MARANHÃO STATE, BRAZIL

Hermann Johann Heinrich Kux; Ulisses Denache Vieira Souza


Revista Brasileira de Cartografia | 2011

MAPEAMENTO DA COBERTURA DO SOLO URBANO UTILIZANDO IMAGENS WORLDVIEW-II E O SISTEMA INTERIMAGE

Bárbara Maria Giaccom Ribeiro; Leila Maria Garcia Fonseca; Hermann Johann Heinrich Kux


Revista Brasileira de Cartografia | 2009

INTERIMAGE: UMA PLATAFORMA COGNITIVA OPEN SOURCE PARA A INTERPRETAÇÃO AUTOMÁTICA DE IMAGENS DIGITAIS

Gilson Alexandre Ostwald Pedro da Costa; Carolina Moutinho Duque de Pinho; Raul Queiroz Feitosa; Cláudia Maria de Almeida; Hermann Johann Heinrich Kux; Leila Maria Garcia Fonseca; Dário Augusto Borges Oliveira


ISPRS - International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences | 2012

CONTRIBUTION OF THE NEW WORLDVIEW-2 SPECTRAL BANDS FOR URBAN MAPPING IN COASTAL AREAS: CASE STUDY SÃO LUÍS ( MARANHÃO STATE, BRAZIL)

Ulisses Denache Vieira Souza; Hermann Johann Heinrich Kux


Revista Brasileira de Cartografia | 2009

ORTORRETIFICAÇÃO DE IMAGENS DO SATÉLITE QUICKBIRD PARA APLICAÇÕES URBANAS

Eduardo Henrique Geraldi Araújo; Hermann Johann Heinrich Kux; Teresa Gallotti Florenzano

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Ulisses Denache Vieira Souza

National Institute for Space Research

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Leila Maria Garcia Fonseca

National Institute for Space Research

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Tessio Novack

National Institute for Space Research

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Carolina Moutinho Duque de Pinho

National Institute for Space Research

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Cláudia Maria de Almeida

National Institute for Space Research

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Gilson Alexandre Ostwald Pedro da Costa

Pontifical Catholic University of Rio de Janeiro

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Graziela Thaís Meneghetti

National Institute for Space Research

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Raul Queiroz Feitosa

Pontifical Catholic University of Rio de Janeiro

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Thomas Esch

German Aerospace Center

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Bárbara Maria Giaccom Ribeiro

National Institute for Space Research

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