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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Improving Change Detection in Forest Areas Based on Stereo Panchromatic Imagery Using Kernel MNF
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Improving Change Detection in Forest Areas Based on Stereo Panchromatic Imagery Using Kernel MNF

机译:基于核MNF的立体全色影像在森林区域的变化检测

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摘要

The goal of this paper is to develop an efficient method for forest change detection using multitemporal stereo panchromatic imagery. Due to the lack of spectral information, it is difficult to extract reliable features for forest change monitoring. Moreover, the forest changes often occur together with other unrelated phenomena, e.g., seasonal changes of land covers such as grass and crops. Therefore, we propose an approach that exploits kernel Minimum Noise Fraction (kMNF) to transform simple change features into high-dimensional feature space. Digital surface models (DSMs) generated from stereo imagery are used to provide information on height difference, which is additionally used to separate forest changes from other land-cover changes. With very few training samples, a change mask is generated with iterated canonical discriminant analysis (ICDA). Two examples are presented to illustrate the approach and demonstrate its efficiency. It is shown that with the same amount of training samples, the proposed method can obtain more accurate change masks compared with algorithms based on k-means, one-class support vector machine, and random forests.
机译:本文的目的是开发一种使用多时相立体全色影像进行森林变化检测的有效方法。由于缺乏光谱信息,因此难以提取可靠的特征以进行森林变化监测。此外,森林变化经常与其他不相关的现象一起发生,例如,土地覆盖物的季节性变化,例如草和农作物。因此,我们提出了一种利用内核最小噪声分数(kMNF)将简单变化特征转换为高维特征空间的方法。从立体图像生成的数字表面模型(DSM)用于提供有关高度差的信息,该信息还用于将森林变化与其他土地覆被变化分开。在训练样本很少的情况下,使用迭代规范判别分析(ICDA)会生成更改掩码。给出两个示例来说明该方法并证明其效率。结果表明,与基于k均值,一类支持向量机和随机森林的算法相比,在相同数量训练样本的情况下,该方法可以获得更准确的变化掩码。

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