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thales:ongoing_papers [2010/06/08 16:50]
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 ====== Ongoing Papers ====== ====== Ongoing Papers ======
  
-  ​* **Interpreting Images with GeoDMA.** ​[[http://​www.dpi.inpe.br/​~tkorting/​docs/​korting2010interpreting.pdf|Paper]]. ​Thales Sehn Korting, Leila Fonseca, Gilberto Camara. **GEOBIA ​2010.** //Object oriented analysis offers effective tools to represent the knowledge in scene. Knowledge-based interpretation arises as an effective way to interpret ​remote sensing ​imageryIn this approachhuman’s expertise ​is organized in knowledge base to be used as input of automated interpretation processes, thus enhancing performance ​and accuracy, and reducing at the same time the subjectivity ​in the interpretation processSome systems such as Definiens, ENVI-FX, and more recently, InterIMAGE, have incorporated useful tools to aid the object-oriented classification. In this contextthis work presents a system for object image analysis, called Geographical Data Mining Analyst (GeoDMA), which implements several mechanisms for automatic image interpretation. It performs image segmentation,​ objects feature ​extraction, supervised and unsupervised classification ​with raster, shape and cellular data sets. GeoDMA has been used for intra-urban land cover classification of high spatial resolution images ​and also to detect deforestation ​patterns ​in the Brazilian Amazon. ​Such different applications warrant the generalist behavior of the system. In this articlewe discuss each module implemented in the system, the integration of objects obtained by segmentation to extract texture features and landscape metricsWe also show the main tools for data preprocessing,​ sample selection and feature visualizationFinally, one application of automatic urban interpretation is shown.//+==== Writing ==== 
 +  ​* **GeoDMA ​- A software for geographical pattern recognition.** Thales Sehn Korting, Leila Fonseca, Gilberto Camara. **EMS 2010?** //This work presents ​novel software for pattern recognition applied ​to geographical and remote sensing ​dataGeoDMA stands for Geographical Data Mining Analystand is a free software designed ​to include data mining techniques to aid domain-experts in the detection ​of land cover and land use patterns ​in geographical databasesFor this purpose, GeoDMA ​includes spatial and spectral features ​extraction, ​visual data analysis and supervised and unsupervised classification ​algorithms. GeoDMA has already ​been applied to detect ​intra-urban ​classes of land cover and to detect ​patterns of deforestation in the Brazilian Amazon.// **Este paper já está pronto2 páginasNão valeria a pena enviá-lo?​** {{:​thales:​ems_short.pdf}}
  
-  * **GeoDMA ​- A software for geographical pattern recognition.** Thales Sehn Korting, Leila Fonseca, Gilberto Camara. **EMS 2010?** //This work presents ​novel software for pattern recognition applied ​to geographical and remote sensing ​dataGeoDMA stands for Geographical Data Mining Analystand is a free software designed ​to include data mining techniques to aid domain-experts in the detection ​of land cover and land use patterns ​in geographical databasesFor this purpose, GeoDMA ​includes spatial and spectral features ​extraction, ​visual data analysis and supervised and unsupervised classification ​algorithms. GeoDMA has already ​been applied to detect ​intra-urban ​classes of land cover and to detect ​patterns of deforestation in the Brazilian Amazon.//+  * **Interpreting Images with GeoDMA.** Thales Sehn Korting, Leila Fonseca, Gilberto Camara. ​[[thales:​geodma_paper|[Paper].]] ​**International Journal of Applied Earth Observation and Geoinformation, ​2010?** //Object oriented analysis offers effective tools to represent the knowledge in scene. Knowledge-based interpretation arises as an effective way to interpret ​remote sensing ​imageryIn this approachhuman'​s expertise ​is organized in knowledge base to be used as input of automated interpretation processes, thus enhancing performance ​and accuracy, and reducing at the same time the subjectivity ​in the interpretation process. Some systems such as Definiens, ENVI-FX, and more recently, InterIMAGE, have incorporated useful tools to aid the object-oriented classificationIn this contextthis work presents a system for object image analysis, called Geographical Data Mining Analyst (GeoDMA), which implements several mechanisms for automatic image interpretation. It performs image segmentation,​ objects feature ​extraction, supervised and unsupervised classification ​with raster, shape and cellular data sets. GeoDMA has been used for intra-urban land cover classification of high spatial resolution images ​and also to detect deforestation ​patterns ​in the Brazilian Amazon. Such different applications warrant the generalist behavior of the system. In this article, we discuss each module implemented in the system, the integration of objects obtained by segmentation to extract texture features and landscape metrics. We also show the main tools for data preprocessing,​ sample selection and feature visualization. Finally, one application of automatic urban interpretation is shown.//
  
-  * **A re-segmentation approach to detect rectangular objects in high resolution imagery.** Thales Sehn Korting, Luciano Dutra, Leila Fonseca. **GRSL, 2010?** //Image segmentation covers techniques for splitting one image into its components. This paper presents a re-segmentation approach applied to urban images. The interest elements, such as houses roofs, are considered to have a rectangular shape. Our technique finds and produces rectangular objects, setting to background the remaining elements to background. With an over-segmented image we connect bordering elements in a graph, known as {\it Region Adjacency Graph} -- RAG. By going into the graph, we search for the best cuts that may result in more rectangular objects, using a relaxation-like approach. Results show that the method was able to match rectangles, according to user-defined parameters, such as maximum levels of graph depth search and minimum degree of rectangularity for interest objects. //+==== Submitted ====
  
-  * **GeoSOM applied to image segmentation.** Thales Sehn Korting, Leila Fonseca. **SIBGRAPI ​2010?** //Image segmentation ​is one of the most challenging steps in image processingIts results are used by many other tasks regarding information extraction from images. ​In remote sensing, segmentation generates regions according to found targets in a satellite image, as roofs, ​streets, trees, vegetation, agricultural crops, or deforested areas. Such regions ​are used to differentiate land uses by classification algorithms. In this paper we investigate ​way to make segmentation using a strategy to classify ​and merge spectrally and spatially similar pixelsusing an extension of the Self-Organizing Maps algorithm, named GeoSOM. Neurons will have similar properties ​to the main elements ​found in the image. By associating ​different label to each image pixel, according ​the most similar neuronneighboring pixels with the same label are merged into segments.//+  * **A re-segmentation ​approach to detect rectangular objects in high resolution imagery.** Thales Sehn Korting, Luciano Dutra, Leila Fonseca. **GRSL, 2010** //Image segmentation ​covers techniques for splitting ​one image into its componentsThis paper presents a re-segmentation approach applied to urban images. ​The interest elementssuch as houses ​roofs, are considered ​to have rectangular shape. Our technique finds and produces rectangular objectssetting ​to background ​the remaining ​elements ​to background. With an over-segmented ​image we connect bordering elements in a graph, known as {\it Region Adjacency Graph} -- RAG. By going into the graph, we search for the best cuts that may result in more rectangular objects, using relaxation-like approach. Results show that the method was able to match rectangles, according ​to user-defined parameterssuch as maximum levels of graph depth search and minimum degree of rectangularity for interest objects. //
  
-  * **Use of an Improved Expectation-Maximization ​approach ​for Remote Sensing Data Classification.** Thales Sehn Korting, Luciano Dutra, Leila Fonseca, Guaraci Erthal. **CIARP 2010?** //In statistical pattern recognition,​ mixture models allow a +  * **A Geographical ​approach ​to Self-Organizing Maps algorithm applied to image segmentation.** Thales Sehn Korting, Leila Fonseca. **SITIS 2010** //Image segmentation is one of the most challenging steps in image processing. Its results are used by many other tasks regarding information extraction from images. In remote sensing, segmentation generates regions according to found targets in a satellite image, like roofs, streets, trees, vegetation, agricultural crops, or deforested areas. Such regions differentiate land uses by classification ​algorithms. In this paper we investigate a way to perform segmentation using a strategy to classify and merge spectrally and spatially similar pixels. For this purpose we use a geographical extension of the Self-Organizing Maps algorithm, which exploits the spatial correlation among near pixels. Trained neurons have similar properties to the main elements found in the image. By associating different labels to the image pixels, according the most similar neuron, neighboring pixels with the same label are merged into segments.//​ 
-formal approach to unsupervised learning. ​This work aims to present a modification ​of the Expectation-Maximization ​clustering ​method applied to remote sensing ​images. The stability of its convergence has been increased ​by supplying the results of the well-known k-Means algorithmas seed points. Hence, the accuracy has been improved by applying cluster validity measures ​to each configuration,​ varying ​the initial ​number of clusters. High-resolution urban scenes has been tested, and we show comparison to standard supervised classification resultsPerformance tests were also realized, showing ​the improvements of our proposalin comparison ​to the original one.//+ 
 +  * **Assessment of a modified version of the EM algorithm for remote sensing data classification.** Thales Sehn Korting, Luciano Dutra, Guaraci Erthal, Leila Fonseca. **CIARP 2010** //This work aims to present ​an assessment of modified version ​of the standard EM clustering ​algorithm for remote sensing ​data classification. The modification purpose was to improve the EM initialization ​by providing ​results of the well known K-means algorithm as seed points ​and to provide rules for decreasing ​the number of modes once certain a priori cluster probability is very lowAs observing clusters with very similar mean vectors but differing only on the covariance structures is not natural for remote sensing objectsanother modification was proposed ​to avoid keeping clusters whose centres are too close. It was observed that this modified EM algorithm presented ​the best agreement with a reference map ploted on the scene when compared with standard K-means and SOM results.//

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