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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Graph-Based Feature Selection for Object-Oriented Classification in VHR Airborne Imagery
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Graph-Based Feature Selection for Object-Oriented Classification in VHR Airborne Imagery

机译:VHR机载影像中基于图的特征选择用于面向对象的分类

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摘要

Linearly nonseparability and class imbalance of very high resolution (VHR) imagery make feature selection for object-oriented classification quite challenging, while such characteristics, especially class imbalance, have usually been ignored in open literature. To cope with the challenges, this paper proposes a new graph-based feature selection method named locally weighted discriminating projection (LWDP). First, the popular graph-based criteria of feature selection are reformulated to present linear or nonlinear mapping in feature space. Second, weight matrices of graphs characterize dissimilarity rather than similarity between pairwise neighbors, to well-preserved local structure when the difference of distance between a sample and its neighbors is large. Finally, LWDP provides a new perspective to alleviate class imbalance at both global and local levels, by restricting the pairwise relationships in the weight matrices. Specifically, neighborhood unions are introduced to employ the local class distribution and class size to constrain pairwise relationships in the weight matrices when classifying unbalanced sample sets. To evaluate the performances of LWDP in low dimensions, a holistic scoring scheme is proposed to stress the performances under low dimensions. In addition, overall accuracy curves and Kappa Index of Agreement (KIA) curves, which exhibit KIA in dimensions, are also used. The experimental results show that LWDP and its kernel extension outperform the other classic or latest methods in processing unbalanced sample set of VHR airborne imagery.
机译:高分辨率(VHR)图像的线性不可分性和类别不平衡使得面向对象分类的特征选择颇具挑战性,而开放文献通常忽略了此类特征,尤其是类别不平衡。为了应对这些挑战,本文提出了一种新的基于图的特征选择方法,称为局部加权判别投影(LWDP)。首先,重新构建基于流行的基于图的特征选择标准,以在特征空间中呈现线性或非线性映射。其次,当样本与其邻居之间的距离差异较大时,图的权重矩阵将成对邻居之间的相似性而不是相似性表征为保存完好的局部结构。最后,LWDP通过限制权重矩阵中的成对关系,为减轻全局和局部级别的班级失衡提供了新的视角。具体来说,当对不平衡样本集进行分类时,引入邻域联合以利用局部类别分布和类别大小来约束权重矩阵中的成对关系。为了评估低尺寸LWDP的性能,提出了一种整体评分方案来强调低尺寸下的性能。此外,还使用了尺寸方面显示出KIA的总体精度曲线和Kappa一致性指数(KIA)曲线。实验结果表明,LWDP及其内核扩展在处理VHR机载图像不平衡样本集方面优于其他经典或最新方法。

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