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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Comparing supervised and unsupervised multiresolution segmentation approaches for extracting buildings from very high resolution imagery
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Comparing supervised and unsupervised multiresolution segmentation approaches for extracting buildings from very high resolution imagery

机译:比较有监督和无监督多分辨率分割方法,以从超高分辨率图像中提取建筑物

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摘要

Although multiresolution segmentation (MRS) is a powerful technique for dealing with very high resolution imagery, some of the image objects that it generates do not match the geometries of the target objects, which reduces the classification accuracy. MRS can, however, be guided to produce results that approach the desired object geometry using either supervised or unsupervised approaches. Although some studies have suggested that a supervised approach is preferable, there has been no comparative evaluation of these two approaches. Therefore, in this study, we have compared supervised and unsupervised approaches to MRS. One supervised and two unsupervised segmentation methods were tested on three areas using QuickBird and WorldView-2 satellite imagery. The results were assessed using both segmentation evaluation methods and an accuracy assessment of the resulting building classifications. Thus, differences in the geometries of the image objects and in the potential to achieve satisfactory thematic accuracies were evaluated. The two approaches yielded remarkably similar classification results, with overall accuracies ranging from 82% to 86%. The performance of one of the unsupervised methods was unexpectedly similar to that of the supervised method; they identified almost identical scale parameters as being optimal for segmenting buildings, resulting in very similar geometries for the resulting image objects. The second unsupervised method produced very different image objects from the supervised method, but their classification accuracies were still very similar. The latter result was unexpected because, contrary to previously published findings, it suggests a high degree of independence between the segmentation results and classification accuracy. The results of this study have two important implications. The first is that object-based image analysis can be automated without sacrificing classification accuracy, and the second is that the previously accepted idea that classification is dependent on segmentation is challenged by our unexpected results, casting doubt on the value of pursuing 'optimal segmentation'. Our results rather suggest that as long as under-segmentation remains at acceptable levels, imperfections in segmentation can be ruled out, so that a high level of classification accuracy can still be achieved.
机译:尽管多分辨率分割(MRS)是处理高分辨率图像的强大技术,但它生成的某些图像对象与目标对象的几何形状不匹配,这降低了分类精度。但是,可以指导MRS使用监督方法或无监督方法生成接近所需对象几何形状的结果。尽管一些研究表明,最好采用监督方法,但尚未对这两种方法进行比较评估。因此,在这项研究中,我们比较了有监督和无监督的MRS方法。使用QuickBird和WorldView-2卫星图像在三个区域上测试了一种监督和两种不受监督的分割方法。使用细分评估方法和结果建筑物分类的准确性评估来评估结果。因此,评估了图像对象的几何形状以及实现令人满意的主题精度的潜力方面的差异。两种方法得出的分类结果非常相似,总体准确度在82%至86%之间。一种不受监督的方法的性能出乎意料地类似于受监督的方法。他们确定了几乎相同的比例参数是分割建筑物的最佳选择,从而为生成的图像对象提供了非常相似的几何形状。第二种无监督方法产生的图像对象与有监督方法非常不同,但是它们的分类精度仍然非常相似。后一个结果是出乎意料的,因为与先前发表的发现相反,它表明了分割结果和分类准确性之间的高度独立性。这项研究的结果有两个重要含义。首先是基于对象的图像分析可以在不牺牲分类精度的情况下实现自动化,其次是先前公认的分类依赖于分割的思想受到了我们意料之外的结果的质疑,这使人们对追求“最佳分割”的价值产生了怀疑。 。我们的结果反而表明,只要分割不足保持在可接受的水平,就可以排除分割的不完善之处,从而仍然可以实现较高的分类精度。

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