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MAD: robust image texture analysis for applications in high resolution geomorphometry

机译:MAD:强大的图像纹理分析,可用于高分辨率几何形态学

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摘要

The analysis of surface textures plays an important role in the geomorphometric analysis of high-resolution digital terrain models. Surface textures can be analyzed by means of geostatistical variogram-based indices. The use of variogram-based indices is promising because of their ability to consider the multiscale and anisotropic character of morphometric data. However, similar to other variance-type statistics, variogram-based indices are sensitive to the presence of hotspots and non-stationary data. Consequently, we present a multi-scale and directional image texture analysis operator (MAD or Median Absolute Differences) derived from a modification of a variogram estimator. MAD has been specifically developed to improve the robustness of variogram-based surface indices with a special focus on strongly non-stationary and often noisy spatial data representing solid earth surface morphology. Although the operator has been specifically developed for the analysis of high-resolution digital terrain models, it can be applied to the texture analysis of any type of image. Consequently MAD could be of interest in the broader context of remote sensing as well as for all disciplines for which image texture analysis is relevant. The theoretical presentation of the surface texture operator is accompanied by a working software prototype. The software prototype has been implemented in the Python scripting language for use in ArcGIS (ESRI) using its Spatial Analyst functions. The prototype architecture is concise and can be easily coded in different software environments, such as GIS mapping and image analysis software. The software prototype proposed has been developed to facilitate the development of ad hoc surface texture indices capable of adapting to the special needs of the study at hand. The MAD operator represents an improvement over variogram-based surface texture indices, offering a robust description of relevant aspects of surface texture, including surface roughness. (C) 2015 Elsevier Ltd. All rights reserved.
机译:表面纹理的分析在高分辨率数字地形模型的地貌分析中起着重要作用。可以通过基于地统计变异函数的索引来分析表面纹理。基于变异函数的索引的使用很有前景,因为它们能够考虑形态计量数据的多尺度和各向异性特征。但是,类似于其他方差类型统计信息,基于方差图的索引对热点和非平稳数据的存在很敏感。因此,我们提出了一种多尺度和方向性的图像纹理分析算子(MAD或中位数绝对差),它是从变异函数估计量的修改中得出的。 MAD是专门为提高基于变异函数的表面指数的鲁棒性而开发的,特别着重于表示固体地球表面形态的强烈非平稳且经常嘈杂的空间数据。尽管操作员是专门为分析高分辨率数字地形模型而开发的,但它可以应用于任何类型图像的纹理分析。因此,MAD可能在更广泛的遥感领域以及与图像纹理分析相关的所有学科中都受到关注。表面纹理算子的理论表示伴随着一个有效的软件原型。该软件原型已使用其Spatial Analyst功能以Python脚本语言实现,可在ArcGIS(ESRI)中使用。原型体系结构简洁,可以在不同的软件环境中轻松编码,例如GIS映射和图像分析软件。已开发出建议的软件原型,以促进能够适应当前研究特殊需要的特殊表面纹理指数的开发。 MAD运算符表示对基于变异函数的表面纹理指数的改进,提供了对表面纹理相关方面(包括表面粗糙度)的可靠描述。 (C)2015 Elsevier Ltd.保留所有权利。

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