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Partially Supervised Classification: Based on Weighted Unlabeled Samples Support Vector Machine

机译:部分监督分类:基于加权的未标记样本支持向量机

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This article addresses a new classification technique: Partially Supervised Classification (PSC), which is used to identify a specific land-cover class of interest from a remotely sensed image using unique training samples that belong to a specified class. This article also presents and discusses a newly proposed novel Support Vector Machine (SVM) algorithm for PSC. Accordingly, its training set includes labeled samples that belong to the class of interest and unlabeled samples of all classes randomly selected from a remotely sensed image. Moreover, all unlabeled samples are assumed to be training samples of other classes, and each of them is assigned a weight factor indicating the likelihood of this assumption; hence, the algorithm is called Weighted Unlabeled Sample SVM (WUS-SVM). Based on the WUS-SVM, a PSC method is proposed Experimental results with both simulated and real datasets indicate that the proposed PSC method can achieve encouraging accuracy and is more robust than the 1-SVM and the Spectral Angle Mapping (SAM) method.
机译:本文介绍了一种新的分类技术:部分监督分类(PSC),该技术用于使用属于指定类别的唯一训练样本从遥感图像中识别特定的土地被覆盖类别。本文还介绍并讨论了一种新提出的新颖的PSC支持向量机(SVM)算法。因此,其训练集包括属于感兴趣类别的标记样本和从遥感图像中随机选择的所有类别的未标记样本。此外,假设所有未标记的样本都是其他类别的训练样本,并且为每个样本分配了权重因子,以表明这种假设的可能性;因此,该算法称为加权未标记样本SVM(WUS-SVM)。提出了一种基于WUS-SVM的PSC方法,无论是模拟数据集还是真实数据集,实验结果均表明,所提出的PSC方法比1-SVM方法和光谱角度映射(SAM)方法具有更高的准确性。

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