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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Multivariate image texture by multivariate variogram for multispectral image classification.
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Multivariate image texture by multivariate variogram for multispectral image classification.

机译:通过多元变异函数的多元图像纹理进行多光谱图像分类。

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摘要

Traditional image texture measure usually allows a texture description of a single band of the spectrum, characterizing the spatial variability of gray-level values within the single-band image. A problem with the approach while applied to multispectral images is that it only uses the texture information from selected bands. In this paper, we propose a new multivariate texture measure based on the multivariate variogram. The multivariate texture is computed from all bands of a multispectral image, which characterizes the multivariate spatial autocorrelation among those bands. In order to evaluate the performance of the proposed texture measure, the derived multivariate texture image is combined with the spectral data in image classification. The result is compared to classifications using spectral data alone and plus traditional texture images. A machine learning classifier based on Support Vector Machines (SVMs) is used for image classification. The experimental results demonstrate that the inclusion of multivariate texture information in multispectral image classification significantly improves the overall accuracy, with 5 to 13.5 percent of improvement, compared to the classification with spectral information alone. The results also show that when incorporated in image classification as an additional band, the multivariate texture results in high overall accuracy, which is comparable with or higher than the best results from the existing single-band and two-band texture measures, such as the variogram, cross variogram and Gray-Level Co-occurrence Matrix (GLCM) based texture. Overall, the multivariate texture provides the useful spatial information for land-cover classification, which is different from the traditional single band texture. Moreover, it avoids the band selection procedure which is prerequisite to traditional texture computation and would help to achieve high accuracy in the most classification tasks.
机译:传统的图像纹理度量通常允许对光谱的单个波段进行纹理描述,以表征单波段图像内灰度值的空间变异性。该方法应用于多光谱图像时的一个问题是它仅使用来自选定波段的纹理信息。在本文中,我们提出了一种基于多元变异函数的新的多元纹理度量。从多光谱图像的所有波段计算出多元纹理,这表征了这些波段之间的多元空间自相关。为了评估所提出的纹理测量的性能,将导出的多元纹理图像与光谱数据进行图像分类。将结果与仅使用光谱数据以及传统纹理图像的分类进行比较。基于支持向量机(SVM)的机器学习分类器用于图像分类。实验结果表明,与仅使用光谱信息进行分类相比,将多纹理信息包含在多光谱图像分类中可显着提高整体准确性,提高了5-13.5%。结果还表明,当将图像纹理作为附加波段并入图像分类时,多变量纹理可获得较高的整体精度,与现有的单波段和两波段纹理度量(例如,变异函数,交叉变异函数和基于灰度共生矩阵(GLCM)的纹理。总体而言,多元纹理为土地覆盖分类提供了有用的空间信息,这与传统的单波段纹理不同。而且,它避免了传统纹理计算所必需的频带选择过程,并且将有助于在大多数分类任务中实现高精度。

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