利用纹理对遥感数据集进行标注

S. Newsam, Lei Wang, S. Bhagavathy, B. S. Manjunath
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引用次数: 9

摘要

与基于正交光谱维数的描述符相比,纹理在遥感数据集分析中仍未得到充分利用。本文介绍了近年来利用纹理实现遥感影像标注自动化的研究进展。描述了两个使用MPEG-7最近标准化的同构纹理描述符的应用程序。首先,通过使用纹理描述符对地理空间对象进行建模,实现对遥感图像的高级访问。特别地,常见的纹理或纹理图案在高维特征空间中被表征为高斯混合。在第二个应用中,纹理描述符用于在感知上有意义的蜡中标记大量航空录像中的区域。高斯混合用于建模各种语义类的特征向量分布。通过将标记区域的空间排列建模为马尔科夫随机场,实现了基于语义布局和语义直方图的帧级相似性检索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using texture to annotate remote sensed datasets
Texture remains largely underutilized in the analysis of remote sensed datasets compared to descriptors based on the orthogonal spectral dimension. This paper describes our recent efforts towards using texture to automate the annotation of remote sensed imagery. Two applications are described that use the homogeneous texture descriptor recently standardized by MPEG-7. In the first, higher-level access to remote sensed imagery is enabled by using the texture descriptor to model geo-spatial objects. In particular, the common textures, or texture motifs, are characterized as Gaussian mixtures in the high-dimensional feature space. In the second application, the texture descriptor is used to label regions in a large collection of aerial videography in a perceptually meaningful wax. Gaussian mixtures are used to model the distribution of feature vectors for a variety of semantic classes. Frame level similarity retrieval based on semantic layout and semantic histogram is enabled by modeling the spatial arrangement of the labeled regions as a Markov random field.
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