Present Situation and Trend of Remote Sensing Land Use/Cover Classification Extraction

Tingfang Jia, Yi Luo, Juan Chen, Wen Dong
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引用次数: 1

Abstract

To further advance the automatic process of land use/cover (LULC) classification extraction through remote sensing (RS) images, by reading many literatures, we summarized the problems, research difficulties and development trends in the process of information extraction and classification of land use. Overall, LULC Classification and extraction based on RS images include 3 tasks: data source selection, sampling design, classification method selection and classifier performance evaluation. These tasks are all important, that is, interdependence and mutual influence. The OBIC method has become a popular method of L ULC classification because it makes full use of geographic information system (GIS) technology to process spatial, spectral and textural features in RS images. There are many OBIC algorithms, especially the Machine learning (ML) algorithms offers the potential for effectiveness and efficiency, such as Random forest (RF), Support vector machine (SVM) and so on. The Object-based image classification (OBIC) method involves three stages: segmentation, feature-selection and classification. A large number of studies have proved that there are many problems in each task of the LCLU classification extraction method based on RS images. These problems include design of sample sampling strategy, determination of optimal image segmentation parameters and optimization of parameter of classification algorithm and so on. At present, solving these problems requires frequent human-computer interaction also has a great negative influence on the automatic extraction process of remote sensing classification. U sing GIS technology to promote the automatic extraction of remote sensing classification has become a trend of the development of remote sensing classification method.
遥感土地利用/覆被分类提取的现状与趋势
为了进一步推进遥感影像土地利用/覆被分类自动提取过程,通过阅读大量文献,总结了土地利用信息提取与分类过程中存在的问题、研究难点和发展趋势。总体而言,基于RS图像的LULC分类与提取包括数据源选择、采样设计、分类方法选择和分类器性能评价3个任务。这些任务都很重要,那就是相互依存,相互影响。OBIC方法充分利用地理信息系统(GIS)技术对遥感图像的空间、光谱和纹理特征进行处理,已成为一种流行的lulc分类方法。OBIC算法有很多,特别是机器学习(ML)算法提供了潜在的有效性和效率,如随机森林(RF)、支持向量机(SVM)等。基于目标的图像分类(OBIC)方法包括三个阶段:分割、特征选择和分类。大量的研究证明,基于RS图像的LCLU分类提取方法在每个任务中都存在很多问题。这些问题包括样本采样策略的设计、最优图像分割参数的确定以及分类算法参数的优化等。目前解决这些问题需要频繁的人机交互,也对遥感分类的自动提取过程产生了很大的负面影响。利用GIS技术推动遥感分类自动提取已成为遥感分类方法发展的一个趋势。
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