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Nearest neighbor based one-class classification of remote sensing imagery

机译:基于最近邻的一类遥感影像分类

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The task of one-class classification is to recognize one specific land-cover class of interest in the remote sensing image. To extract the specific class, the feature space is partitioned into two classes, the class of interest and the other class, with the nearest neighbor classifier. This reduces the effort of training sample selection in the classification. The training samples are selected for the class of interest firstly. Then, training samples of the other class are collected near the samples of the class of interest. As spatial proximity of a sample pair is often correlated to spectral similarity, the spatially adjacent samples of the two classes should create margins to distinguish the specific class of interest from the other class. Using the two kinds of samples, the specific class of interest is classified with nearest neighbor rule. The good performance of one-class classification is validated in the experiment of remote sensing classification.
机译:一类分类的任务是识别遥感图像中感兴趣的一种特定的土地覆盖类别。为了提取特定的类别,将特征空间划分为两个类别,一个是感兴趣的类别,另一个是具有最近邻居分类器的类别。这减少了在分类中训练样本选择的工作量。首先针对感兴趣的类别选择训练样本。然后,在感兴趣类别的样本附近收集另一类别的训练样本。由于一个样本对的空间接近度通常与光谱相似性相关,因此,这两个类别在空间上相邻的样本应产生余量,以将感兴趣的特定类别与另一个类别区分开。使用这两种样本,使用最近邻居规则对特定的兴趣类别进行分类。遥感分类实验验证了一类分类的良好性能。

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