基于互信息的高光谱特征空间划分进行数据融合

S. Prasad, L. Bruce
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引用次数: 16

摘要

遥感界正在积极探索多源数据融合,以实现鲁棒自动目标识别(ATR)和其他类似应用。这种方法利用对一种现象的多个独立观测,并对ATR、场景分类、土地覆盖制图等进行特征级或决策级融合。在本文中,我们提出了一种利用这种融合技术来利用高光谱数据的方法,否则高光谱数据通常会受到小样本量问题的困扰,(即,通常没有数据维度那么多的真实像素)。在这项工作中,我们研究了在多分类器设置中使用高阶统计信息(使用平均互信息)进行自下而上频带分组的有效性。采用波段分组方法将高光谱空间划分为近似独立的子空间。为分区中的每个子空间分配一个分类器。最终的分类决策是通过融合来自每个子空间的局部决策来做出的。本文的目标是:(1)利用所提出的基于互信息的度量进行子空间识别;(2)探索设计参数对融合性能的影响;(3)在划分的子空间上比较决策级融合与特征级融合的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral feature space partitioning via mutual information for data fusion
Multi-source data fusion is being actively explored in the remote sensing community for robust automatic target recognition (ATR) and other similar applications. Such an approach exploits multiple, independent observations of a phenomenon and performs a feature level or a decision level fusion for ATR, scene classification, land cover mapping, etc. In this paper, we present a method that utilizes such fusion techniques to exploit hyperspectral data, which otherwise typically suffers from the small sample size problem, (i.e., there are typically not as many ground truth pixels as the dimensionality of the data). In this work, we study the efficacy of using higher order statistical information (using average mutual information) for a bottom up band grouping in a multi- classifier setup. The band grouping procedure is employed to partition the hyperspectral space into approximately independent subspaces. A classifier is assigned to each subspace in the partition. Final classification decisions are made by fusing local decisions from each subspace. The goal of this paper is to (1) perform subspace identification using the proposed mutual information based metric, (2) explore the effect of the design parameters on the fusion performance and, (3) compare the performance of decision level fusion with feature level fusion over the partitioned subspace.
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