首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A MODIFIED THREE-DIMENSIONAL GRAY-LEVEL CO-OCCURRENCE MATRIX FOR IMAGE CLASSIFICATION WITH DIGITAL SURFACE MODEL
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A MODIFIED THREE-DIMENSIONAL GRAY-LEVEL CO-OCCURRENCE MATRIX FOR IMAGE CLASSIFICATION WITH DIGITAL SURFACE MODEL

机译:一种基于数字表面模型的三维三维灰度共生矩阵图像分类

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2D texture cannot reflect the 3D object’s texture because it only considers the intensity distribution in the 2D image region but int real world the intensities of objects are distributed in 3D surface. This paper proposes a modified three-dimensional gray-level co-occurrence matrix (3D-GLCM) which is first introduced to process volumetric data but cannot be used directly to spectral images with digital surface model because of the data sparsity of the direction perpendicular to the image plane. Spectral and geometric features combined with no texture, 2D-GLCM and 3D-GLCM were put into random forest for comparing using ISPRS 2D semantic labelling challenge dataset, and the overall accuracy of the combination containing 3D GLCM improved by 2.4% and 1.3% compared to the combinations without textures or with 2D-GLCM correspondingly.
机译:2D纹理无法反映3D对象的纹理,因为它仅考虑2D图像区域中的强度分布,而在现实世界中,对象的强度分布在3D表面中。本文提出了一种改进的三维灰度共生矩阵(3D-GLCM),该矩阵首先用于处理体积数据,但由于垂直于方向的数据稀疏性而不能直接用于具有数字表面模型的光谱图像。图像平面。使用ISPRS 2D语义标记挑战数据集将没有纹理,2D-GLCM和3D-GLCM的光谱和几何特征放入随机森林中进行比较,与3D GLCM组合相比,包含3D GLCM的组合的整体准确性分别提高了2.4%和1.3%没有纹理或带有2D-GLCM的组合。

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