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Geostatistical modelling of spatial dependence in area-class occurrences for improved object-based classifications of remote-sensing images

机译:区域类事件中空间依赖性的地统计学建模,用于改进基于对象的遥感图像分类

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Geographical object-based image analysis (GEOBIA) is widely used for the processing of fine spatial resolution images, with increased research on contextual modelling and classification related to GEOBIA. Specifically, a previously developed object-based image classification method, known as geostatistically weighted k-NN (gk-NN) method, has shown advantages in increasing classification accuracy. The gk-NN method incorporates spatial weighting into the k-NN classifier through modelling spatial covariance of underlying area classes. However, change-of-support problem (COSP) due to different geometries of image objects is not considered therein. In this paper, we propose a method based on geostatistical de-regularization and regularization for quantifying spatial dependence in area-class occurrences and accounting for scale discrepancy in image objects and pixels. In this new modelling approach, an area-weighted (AW) distance measure is applied for modelling spatial covariance pertaining to sample image objects. The covariance model fitted with image objects sample data is de-regularized to a point-support one, so the spatial covariance over unsampled image objects can then be computed through regularization of a point-support model (RP). Unlike the previous modelling approach in the object based gk-NN classification, whereby spatial dependence modelling is based on centroids of image objects, this method accounts for change of support and incorporates the geometry of image objects in modelling. The new modelling method was tested on three remote-sensing image subsets with different environments, using regular and irregular segmentation methods at hierarchical scales. It was confirmed that the RP method leads to largely significant increases in classification accuracies (with an average increase of 38.09% in classification accuracy with eighteen cases), compared with that by geostatistical modelling with image object centroids. The proposed method can be used for the modelling of spatial dependence in block-support data which are common in many geospatial applications.
机译:基于地理对象的图像分析(GEOBIA)被广泛用于处理精细的空间分辨率图像,并且对与GEOBIA相关的上下文建模和分类的研究日益增多。具体而言,先前开发的基于对象的图像分类方法,称为地统计加权k-NN(gk-NN)方法,在提高分类精度方面显示出优势。 gk-NN方法通过对基础区域类别的空间协方差建模,将空间权重合并到k-NN分类器中。然而,其中未考虑由于图像对象的不同几何形状而引起的支持改变问题(COSP)。在本文中,我们提出了一种基于地统计学去正则化和正则化的方法,用于量化区域类事件中的空间依赖性并解决图像对象和像素中的比例差异。在这种新的建模方法中,将区域加权(AW)距离度量应用于与样本图像对象有关的空间协方差建模。将装有图像对象样本数据的协方差模型反正则化为点支持模型,因此可以通过对点支持模型(RP)进行正则化来计算未采样图像对象的空间协方差。与以前的基于对象的gk-NN分类中的建模方法不同,空间依赖建模基于图像对象的质心,该方法考虑了支持的变化并将图像对象的几何形状纳入建模中。使用常规和不规则分割方法在分层尺度上对具有不同环境的三个遥感图像子集测试了新的建模方法。可以肯定的是,与采用图像对象质心的地统计学模型相比,RP方法导致分类准确性的显着提高(在18种情况下,分类精度平均提高38.09%)。所提出的方法可以用于在许多地理空间应用中常见的块支持数据中的空间依赖性建模。

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