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Supervised Classification of Satellite Images with Spatially Inaccurate Training Field Data

机译:训练场数据空间不准确的卫星图像的监督分类

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The use of satellite images for environmental monitoring has shown a great potential to monitor large areas at relatively low costs. Classically, domain experts identify natural habitats in small areas, and construct habitat distribution maps over larger areas using a supervised classification. Since each pixel may correspond to several habitats, we are in a multi-target classification framework. Instances are pixels. Each pixel is associated with several target variables (i.e. habitats) simultaneously. Each variable is a set of category labels, i.e. a set of intervals (bins) representing habitat proportions. In such context, training data often comes from field data acquired by domain experts. However, location of these data may be approximate (e.g. due to accuracy of handheld GPS). This spatial inaccuracy is particularly problematic when these data are used to train a classifier on very high resolution (VHR) satellite images. Indeed, in some cases, spatial accuracy of field data may be much lower than the one of images. In this paper, we propose a preprocessing approach to correct this spatial inaccuracy of field data w.r.t. VHR satellite images. First, our process extracts candidate sequences of pixels related to a given field inventory. Then, it extracts the corresponding sequence of habitats in the field data and compare its similarity with the corresponding candidate sequence of pixels. Finally, it ranks candidate sequences of pixels and select the best one as training data. Two similarity measures are studied in this work. To validate our approach, we compare the performances of 46 multi-target supervised classification algorithms on a dataset dealing with coral reef monitoring. We study accuracy of classifiers with and without our preprocessing approach. We also compare performances of the two proposed similarity measures. Results show that the percentage of pixels whose labels were accurately predicted is much higher with our preprocessed data than the one with raw data.
机译:利用卫星图像进行环境监测已显示出以相对较低的成本监测大面积区域的巨大潜力。传统上,领域专家会在小区域中识别自然栖息地,并使用监督分类在较大区域中构建栖息地分布图。由于每个像素可能对应几个栖息地,因此我们处于多目标分类框架中。实例是像素。每个像素同时与多个目标变量(即栖息地)相关联。每个变量是一组类别标签,即代表栖息地比例的一组间隔(箱)。在这种情况下,训练数据通常来自领域专家获取的现场数据。但是,这些数据的位置可能是大概的(例如,由于手持式GPS的准确性)。当这些数据用于在非常高分辨率(VHR)卫星图像上训练分类器时,这种空间不精确性尤其成问题。实际上,在某些情况下,现场数据的空间精度可能远低于图像之一。在本文中,我们提出了一种预处理方法来纠正现场数据w.r.t.的空间误差。 VHR卫星图像。首先,我们的过程提取与给定字段清单相关的像素的候选序列。然后,它在野外数据中提取相应的栖息地序列,并将其相似性与相应的候选像素序列进行比较。最后,它对像素的候选序列进行排序,并选择最佳的像素序列作为训练数据。在这项工作中研究了两个相似性度量。为了验证我们的方法,我们在处理珊瑚礁监测的数据集上比较了46种多目标监督分类算法的性能。我们研究采用和不采用预处理方法的分类器的准确性。我们还比较了两个拟议的相似性度量的性能。结果显示,经过预处理的数据中,能够准确预测标签的像素比例要比原始数据高得多。

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