基于MAP模型的遥感影像亚像元制图

Ke Wu, Pingxiang Li, Liangpei Zhang
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引用次数: 14

摘要

混合像元是遥感分类中常见的问题。尽管可以使用像素非混合模型估计不同类别的这些像素的组成,但输出没有提供这些类别在这些像素中的空间分布情况的指示。亚像素映射是一种利用混合像素中包含的信息来获取这些类在这些像素中的空间分布的技术。本文介绍了一种利用空间相关性的亚像素映射算法。利用周围像素中不同类分数的空间排列来确定子像素在中心像素内的位置。为了将亚像素映射算法应用于高空间分辨率的分数图像,可以提出一种正则化的超分辨率图像重建方法来解决基于空间相关性假设和应用软分类结果的最大a后验(MAP)公式问题。将该算法在人工文本图像和真实TM图像上进行了测试,结果表明该算法是一种简单有效的解决亚像素映射问题的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-pixel Mapping of Remote Sensing Image Based on MAP model
Mixed pixel is a common problem in Remotely Sensed classification. Even though the composition of these pixels for different classes can be estimated with pixel un-mixing model, the output provides no indication of how such classes are distributed spatially within these pixels. Sub-pixel mapping is a technique designed to obtain the spatial distribution of these classes in these pixels with information contained in mixed pixels. In this paper, the work introduces a sub- pixel mapping algorithm exploiting spatial dependence. The spatial arrangement of the different class fractions in surrounding pixels is used to find the location of the sub-pixels inside the central pixel. The sub-pixel mapping algorithm is intended to be applied to fraction images of a high spatial resolution, a regularized super-resolution image reconstruction method can be proposed to solve the problem called the Maximum A Posteriori (MAP) formulation, which based on the assumption of spatial dependence and the application of the soft classification result. With the upscale factor the proposed algorithm was tested on both artificial text image and real TM image, the result shows that it is a simple and efficient method to solve the sub-pixel mapping problem.
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