基于残差的多源遥感图像分类方法

Dongdong Cao, Ping Guo
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引用次数: 0

摘要

多源遥感图像的分类研究已经进行了几十年,提出了许多方法。这些研究大多集中在如何改进分类器以获得更高的分类精度。然而,正如我们所知,即使是最有前途的神经网络方法,其良好的性能不仅取决于分类器本身,还与训练模式(即特征)有关。针对这一问题,本文提出了一种基于残差的多源遥感图像特征选择与分类方法。特别地,提出了一种特征选择方案方法,该方法通过考虑与每个土地覆盖类别相关的残差,选择有效的特征子集作为分类器的输入。此外,本文还研究了一种基于前馈神经网络的特征选择分类技术。在多源数据集上进行的实验结果证实了该方法的有效性
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Residual Error based Approach to Classification of Multisource Remote Sensing Images
Classification of multisource remote sensing images has been studied for decades, and many methods have been proposed. Most of these studies focus on how to improve the classifiers in order to obtain higher classification accuracy. However, as we know, even if the most promising neural network method, its good performance not only depends on the classifier itself, but also has relation to the training pattern (i.e. features). On consideration of this aspect, we propose an approach to feature selection and classification of multisource remote sensing image based on residual error in this paper. In particular, a feature-selection scheme approach is proposed, which is to select effective subsets of features as inputs of a classifier by taking into account the residual error associated with each land-cover class. In addition, a classification technique base on selected features by using a feedforward neural network is investigated. The results of experiments carried out on a multisource data set confirm the validity of the proposed approach
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