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Comparison of pixel-based and object-oriented image classification approaches—a case study in a coal fire area, Wuda, Inner Mongolia, China

机译:基于像素和面向对象的图像分类方法的比较-以内蒙古乌达的一个煤火区为例

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Pixel-based and object-oriented classifications were tested for land-cover mapping in a coal fire area. In pixel-based classification a supervised Maximum Likelihood Classification (MLC) algorithm was utilized; in object-oriented classification, a region-growing multi-resolution segmentation and a soft nearest neighbour classifier were used. The classification data was an ASTER image and the typical area extent of most land-cover classes was greater than the image pixels (15 m). Classification results were compared in order to evaluate the suitability of the two classification techniques. The comparison was undertaken in a statistically rigorous way to provide an objective basis for comment and interpretation. Considering consistency, the same set of ground data was used for both classification results for accuracy assessment. Using the object-oriented classification, the overall accuracy was higher than the accuracy obtained using the pixel-based classification by 36.77%, and the user's and producer's accuracy of almost all the classes were also improved. In particular, the accuracy of (potential) surface coal fire areas mapping showed a marked increase. The potential surface coal fire areas were defined as areas covered by coal piles and coal wastes (dust), which are prone to be on fire, and in this context, indicated by the two land-cover types 'coal' and 'coal dust'. Taking into account the same test sites utilized, McNemar's test was used to evaluate the statistical significance of the difference between the two methods. The differences in accuracy expressed in terms of proportions of correctly allocated pixels were statistically significant at the 0.1% level, which means that the thematic mapping result using object-oriented image analysis approach gave a much higher accuracy than that obtained using the pixel-based approach.
机译:对基于像素和面向对象的分类进行了测试,以用于煤火区域的土地覆盖制图。在基于像素的分类中,使用了监督的最大似然分类(MLC)算法;在面向对象的分类中,使用了区域增长的多分辨率分割和软最近邻分类器。分类数据为ASTER图像,大多数土地覆盖类别的典型面积范围大于图像像素(15 m)。比较分类结果以评估两种分类技术的适用性。比较是按照统计上严格的方式进行的,以便为评论和解释提供客观的依据。考虑到一致性,两个分类结果均使用同一组地面数据进行准确性评估。使用面向对象的分类,总体准确性比使用基于像素的分类获得的准确性高36.77%,并且几乎所有类别的用户和生产者的准确性也得到了提高。特别是,(潜在)地表着火区域的制图精度显着提高。潜在的地表煤着火区域定义为容易着火的煤堆和煤渣(粉尘)覆盖的区域,在这种情况下,用“煤”和“煤尘”两种土地覆盖类型表示。考虑到所使用的相同测试地点,麦克尼玛氏测试用于评估两种方法之间差异的统计显着性。以正确分配的像素比例表示的精度差异在0.1%的水平上具有统计学意义,这意味着使用面向对象图像分析方法的主题映射结果比使用基于像素的方法获得的精度更高。

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