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Segmentation and Object-Based Land Cover Classification of Airborne Images in Kraliky County

机译:基于克朗县的空气覆盖空中图像的分割和基于对象的土地覆盖分类

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Old airborne images still represent a challenge for effective classification of land cover due to single-band acquisition and missing the ground true. The land cover of the Kraliky county (NE of Czechia) captured by 55 orthophotos in 1953 and 2016 was classified to evaluate the long-term LC development of this peripheral region. The comparison of manual digitization, per-pixel and object-oriented classification demonstrated benefits of the last approach. The multiresolution segmentation was tuned separately for images with and without built-up areas. The object-oriented classification was focused to distinguish 5 basic classes – forest, grassland, cropland, water and built-up. To improve accuracy, the last class required a visual inspection and part reclassification. Linear features such as roads and railways were classified differently based on ancillary vector data, i.e. its visual inspection in images and modifications. The LC development of Kraliky county shows 21% increased forested area and the same level of decrease for grasslands. Built-up areas are larger by 8%, and the area of cropland remains the same despite collectivization in the 1950s. The segmentation and object-oriented classification of airborne images enabled quick statistical assessment of the long-term LC changes. Results indicate that the object-oriented classification is much more effective than manual digitization despite the possible inclusion of manual parts such as partial visual inspection and modification after object-oriented classification, and that the processing time can be reduced to half the average.
机译:由于单频频率采集,旧机载图像仍然代表陆地覆盖的有效分类挑战,并缺少地面。 1953年和2016年由55个orthophotos捕获的Kraliky County(捷克人NE)的土地覆盖分为分类,以评估本周围区域的长期LC开发。手动数字化的比较,每像素和面向对象的分类表明了最后一种方法的益处。多分辨率分割被单独调整,用于具有和不具有内置区域的图像。面向对象的分类集中起来区分5个基本课程 - 森林,草原,农田,水和建成。为了提高准确性,最后一类需要目视检查和部分重新分类。基于辅助矢量数据,即图像和修改的目视检查,诸如道路和铁路等线性特征。克朗基县的LC发展显示了森林面积增加21%,草原减少21%。尽管20世纪50年代,建筑面积较大8%,但田园地区仍然相同。空中图像的分割和面向对象分类使得长期LC变化的快速统计评估。结果表明,尽管可能包含手动部件如面向对象的分类,但是在面向对象的分类之后的诸如部分目视检查和修改之类的手动部件,并且处理时间可以降低到平均值的一半,但是面向对象的分类比手动数字更有效。

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