2017
DOI: 10.1590/1809-4430-eng.agric.v37n5p1015-1027/2017
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Comparative Assessment Between Per-Pixel and Object-Oriented for Mapping Land Cover and Use

Abstract: ABSTRACT:The traditional per-pixel classification methods consider only spectral information, and may be limited. Object-based classifiers, however, also consider shape and texture, firstly segmenting the image, and then classifying individual objects. Thus, a Geographic Object-Based Image Analysis (GEOBIA) was compared in conjunction with data mining techniques and a traditional per-pixel method. A cut of Landsat-8, bands 2 to 7, orbit/point 223/77, located between the municipalities of Cascavel, Corbélia, Ca… Show more

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Cited by 6 publications
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“…Object-oriented classification, as a novel classification approach, can extract features, such as texture, shape and spatial information, after image segmentation which would suppress noise and improve the classification accuracy [30] . Some statistical models and segmentation methods for SAR data have been studied [31][32][33] .…”
Section: Introduction mentioning
confidence: 99%
“…Object-oriented classification, as a novel classification approach, can extract features, such as texture, shape and spatial information, after image segmentation which would suppress noise and improve the classification accuracy [30] . Some statistical models and segmentation methods for SAR data have been studied [31][32][33] .…”
Section: Introduction mentioning
confidence: 99%