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Modified Extinction Profiles for Hyperspectral Image Classification

机译:用于高光谱图像分类的修改灭绝配置文件

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Spectral-Spatial features are helpful for hyperspectral image classification. One of the most successful approaches based morphology is Extinction Profiles (EPs), which is constructed based on the component trees (Max-tree/Mintree) and can accurately extract spatial and contextual information from remote sensing images. However, the dimension of feature extracted by EPs with component trees is large, which potentially causes high redundancy. In order to reduce redundancy information and achieve better feature extraction, we propose a modified EP with the Topological trees (Inclusion tree). The proposed method is carried out on two commonlyused hyperspectral datasets captured over North-western Indiana and Salinas, California. The results show that the proposed method has significantly improved in terms of both accuracy and complexity on the basis of a reduction of half of the feature dimensions compared to the original EPs.
机译:光谱 - 空间特征有助于高光谱图像分类。基于基于成功的形态的最成功的方法之一是基于组件树(MAX树/ Mintree)构造的灭绝分布(EPS),并且可以精确地从遥感图像中提取空间和上下文信息。然而,通过EPS与分量树提取的特征的维度大,其可能导致冗余高。为了减少冗余信息并实现更好的特征提取,我们提出了一种用拓扑树(包含树)的改进的EP。所提出的方法是在加利福尼亚州西北部捕获的两个常用的高光谱数据集上进行。结果表明,根据特征尺寸的一半减少,所提出的方法在精度和复杂性方面都显着改善了与原始EPS相比的一半。

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