首页> 外文会议>2011 IEEE International Geoscience Remote Sensing Symposium >Contextual high-resolution image classification by Markovian data fusion, adaptive texture extraction, and multiscale segmentation
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Contextual high-resolution image classification by Markovian data fusion, adaptive texture extraction, and multiscale segmentation

机译:通过Markovian数据融合,自适应纹理提取和多尺度分割进行上下文高分辨率图像分类

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Spatial-contextual classification methods based either on stochastic Markov random field (MRF) models, on texture analysis, or on region-based processing are important tools for high-resolution multispectral image analysis. In this paper, a novel supervised classification technique is proposed, that integrates the MRF, texture-based, and region-based approaches to contextual image classification in a unique multiscale framework. A previous method, based on the combination of MRFs with multiscale segmentation, is generalized and integrated with the multivariate semivariogram approach to texture analysis. In order to minimize the impact of texture-extraction artifacts at the spatial edges between different classes, an adaptive semivariogram-estimation technique is also developed and iteratively incorporated in the proposed classifier. Experiments are presented with IKONOS images.
机译:基于随机马尔可夫随机场(MRF)模型,纹理分析或基于区域的处理的空间上下文分类方法是高分辨率多光谱图像分析的重要工具。在本文中,提出了一种新颖的监督分类技术,该技术将MRF,基于纹理和基于区域的方法集成到一个独特的多尺度框架中的上下文图像分类。将基于MRF与多尺度分割的组合的先前方法进行了概括,并与多元半变异函数方法进行纹理分析相集成。为了使纹理提取伪影在不同类别之间的空间边缘处的影响最小,还开发了一种自适应半变异函数估计技术,并将其迭代地纳入了提出的分类器中。实验以IKONOS图像呈现。

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