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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Predicting individual pixel error in remote sensing soft classification
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Predicting individual pixel error in remote sensing soft classification

机译:预测遥感软分类中的单个像素误差

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Abstract Accuracy assessment of remote sensing soft (sub-pixel) classifications is a challenging topic. Previous efforts have focused on constructing a soft classification error matrix and producing summary measures to describe overall and per-class map accuracy. However, these summary assessments do not provide information on the spatial distribution of the soft classification error as distributed at the individual pixel level. This is important because the map error of a given class may vary considerably over different regions. Spatial interpolation has been previously used for predicting soft classification error at the pixel level. Here, we propose two alternative domains for soft classification error interpolation, the spectral and mapped class proportion domains. In the spectral domain we interpolate errors in the classification feature space, whereas in the mapped class proportion domain interpolation takes place in a space with dimensions defined by the mapped class proportions (i.e., the output of the soft classification). The two newly proposed prediction methods (spectral domain and mapped class proportion domain), spatial interpolation, and a summary measure method were evaluated using 23 test regions, each 10km×10km, distributed throughout the United States. These 10km×10km blocks had complete coverage reference data (where the reference classification was determined by manual interpretation) and the predicted error maps were then evaluated by comparing them to these complete coverage reference error maps. Mean absolute error was used to quantify the agreement of the predicted error maps to the reference error maps. The spectral and mapped class proportion methods generally outperformed the spatial interpolation and the summary measure methods both in terms of smaller mean absolute error and visual similarity of predicted error maps to the reference error maps. The superiority of the new methods over spatial interpolation is an important result because spatial interpolation is a familiar method analysts would commonly consider for modeling spatial variation of classification error. The predicted soft classification error maps provide a straightforward visual assessment of the spatial patterns of error that can accompany the original classification products to enhance their value in subsequent analysis and modeling tasks. Furthermore, from the standpoint of implementation, our methods do not require additional datasets; the same test dataset currently used for confusion/error matrix construction can be used for our error interpolation methods. Highlights ? Two new domains for soft classification error interpolation were introduced. ? The new methods improved classification error prediction over benchmark methods.
机译:<![cdata [ 抽象 遥感软(子像素)分类的精度评估是一个具有挑战性的主题。以前的努力专注于构建软分类错误矩阵,并产生整体和每级地图精度的摘要措施。然而,这些摘要评估不提供关于在各个像素级别分布的软分类误差的空间分布的信息。这是重要的,因为给定类的地图错误可能在不同的区域上显着变化。以前用于预测像素级别的软分类误差的空间插值。在这里,我们提出了两个用于软分类误差插值的替代域,光谱和映射类比例域。在光谱域中,我们在分类特征空间中插值错误,而在映射类比例域插值中,在由映射类比例限定的尺寸(即软分类的输出)中发生在具有尺寸的空间中。使用23个测试区评估了两个新提出的预测方法(光谱域和映射类比例域),空间插值和摘要测量方法,每10 KM × 10 km × 10 km块具有完整的覆盖范围数据(其中通过手动解释确定参考分类),然后通过将它们与这些完整的覆盖参考错误映射进行比较来评估预测的错误映射。平均绝对误差用于量化预测错误映射的协议映射到参考错误映射。频谱和映射类比例方法通常优于空间插值和摘要测量方法,而少于较小的平均绝对误差和预测错误映射的视觉相似性,对参考错误映射。在空间插值上的新方法的优越性是一个重要结果,因为空间插值是熟悉的方法分析师通常考虑建模分类误差的空间变化。预测的软分类错误映射提供了可以伴随原始分类产品的空间模式的简单视觉评估,以提高随后的分析和建模任务中的价值。此外,从实现的观点来看,我们的方法不需要额外的数据集;目前用于混淆/错误矩阵构造的相同测试数据集可用于我们的错误插值方法。 突出显示 介绍了软分类错误插值的两个新域。 新方法改进了基准方法的分类误差预测。

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