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Adaptive semisupervised feature selection without graph construction for very-high-resolution remote sensing images

机译:无需图形构造的自适应半监督特征选择,可用于超高分辨率遥感影像

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摘要

Semisupervised feature selection methods can improve classification performance and enhance model comprehensibility with few labeled objects. However, most of the existing methods require graph construction beforehand, and the resulting heavy computational cost may bring about the failure to accurately capture the local geometry of data. To overcome the problem, adaptive semisupervised feature selection (ASFS) is proposed. In ASFS, the goodness of each feature is measured by linear objective functions based on loss functions and probability distribution matrices. By alternatively optimizing model parameters and automatically adjusting the probabilities of boundary objects, ASFS can measure the genuine characteristics of the data and then rank and select features. The experimental results attest to the effectiveness and practicality of the method in comparison with the latest and state-of-the-art methods on a Worldview II image and a Quickbird II image. (C) 2016 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:半监督的特征选择方法可以提高分类性能,并以较少的标记对象提高模型的可理解性。但是,大多数现有方法都需要事先进行图构造,并且由此产生的沉重计算成本可能导致无法准确捕获数据的局部几何形状。为了解决该问题,提出了自适应半监督特征选择(ASFS)。在ASFS中,通过基于损失函数和概率分布矩阵的线性目标函数来衡量每个特征的优劣。通过交替优化模型参数并自动调整边界对象的概率,ASFS可以测量数据的真实特征,然后对特征进行排名和选择。与最新和最新的Worldview II图像和Quickbird II图像上的方法相比,实验结果证明了该方法的有效性和实用性。 (C)2016年光电仪器工程师学会(SPIE)

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