论文标题
选择和组合光谱带的软计算方法
A Soft Computing Approach for Selecting and Combining Spectral Bands
论文作者
论文摘要
我们引入了一种软计算方法,用于自动从遥感多光谱图像中选择和组合索引,这些索引可用于分类任务。所提出的方法基于基因编程(GP)框架,该框架成功地用于各种优化问题。通过GP,可以学习最大化样品与两个不同类别的可分离性的指标。一旦获得了所有针对所有类的索引,它们就会在PixelWise分类任务中使用。我们使用基于GP的解决方案来评估复杂的分类问题,例如与热带生物群落内部和热带生物群体之间植被类型有关的问题。使用根据学习光谱指数定义的时间序列,我们表明,GP框架比其他用于区分和对热带生物群落进行分类的指数相比,取得了更高的结果。
We introduce a soft computing approach for automatically selecting and combining indices from remote sensing multispectral images that can be used for classification tasks. The proposed approach is based on a Genetic-Programming (GP) framework, a technique successfully used in a wide variety of optimization problems. Through GP, it is possible to learn indices that maximize the separability of samples from two different classes. Once the indices specialized for all the pairs of classes are obtained, they are used in pixelwise classification tasks. We used the GP-based solution to evaluate complex classification problems, such as those that are related to the discrimination of vegetation types within and between tropical biomes. Using time series defined in terms of the learned spectral indices, we show that the GP framework leads to superior results than other indices that are used to discriminate and classify tropical biomes.