Partially supervised classification of remote sensing images using SVM-based probability density estimation

P. Mantero, G. Moser, S. Serpico
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引用次数: 31

Abstract

A general problem of supervised remotely. sensed image classification assumes prior knowledge to be available for all thematic classes that are present in the considered data set. However, the ground truth map representing this prior knowledge usually does not really, describe all the land cover typologies in the image and the generation of a complete training set represents a time-consuming, difficult and expensive task. This problem may play a relevant role in remote sensing data analysis, since it affects the classification performances of supervised classifiers, which erroneously assign each sample drawn from an unknown class to one of the known classes. In the present paper, a classification strategy is proposed, which allows the identification of samples drawn from unknown classes, through the application of a suitable Bayesian decision rule. The proposed approach is based on support vector machines (SVMs) for the estimation of probability density, functions and on a recursive procedure to generate prior probabilities estimates for both known and unknown classes. For experimental purposes, both a synthetic data set and two real data sets are employed.
基于svm的遥感图像概率密度估计部分监督分类
远程监督的普遍问题。感测图像分类假定对所考虑的数据集中存在的所有主题类都具有先验知识。然而,代表这种先验知识的地面真值图通常不能真正描述图像中所有的土地覆盖类型,生成完整的训练集是一项耗时、困难和昂贵的任务。这个问题可能在遥感数据分析中发挥相关作用,因为它会影响监督分类器的分类性能,因为监督分类器会错误地将从未知类中抽取的每个样本分配给已知类之一。在本文中,提出了一种分类策略,通过应用合适的贝叶斯决策规则,可以识别从未知类别中提取的样本。该方法基于支持向量机(svm)估计概率密度和函数,并基于递归过程生成已知和未知类别的先验概率估计。为了实验目的,我们使用了一个合成数据集和两个真实数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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