基于现有土地覆盖分类产品和Google Earth Engine平台,制作历史分类产品

Kunsheng Jue, B. Zhong, A. Yang
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引用次数: 1

摘要

土地覆被分类在探测变化(如城市、森林、植被变化)和提取和分析信息方面起着至关重要的作用。然而,传统的土地覆盖分类方法往往花费大量的时间在数据处理上,导致分类产品的生产效率低下。此外,现有的方法大多很少考虑样本在时间上的应用,特别是缺乏构建长时间序列的基础数据。在本研究中,我们使用历史高精度分类数据创建样本集,在Google Earth引擎上训练分类器,我们将分类器应用到同一地区的其他年份。在一定程度上实现了分类器在时间上的扩展。分类数据主要来自Google Earth Engine提供的Landsat卫星系列数据。通过混淆矩阵对分类效果进行评价,结果表明,总体准确率超过93.0%,kappa系数为0.9,其他年份的准确率也高于85%,说明我们在时间上更好、稳定地实现了样本迁移和分类器的扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Production of historical classification products based on existing land cover classification products and Google Earth Engine platform
Land cover classification plays a crucial role in the detection of changes (such as cities, forests, vegetation changes) and the extraction and analysis of information. However, traditional land cover classification methods always spend a lot of time on data processing, which leads to inefficient production of classified products. Furthermore, most of the existing methods rarely consider the application of the sample in time, especially the lack of basic data for building long time series. In this study, we used historical high-precision classification data to create a sample set to train the classifier on the Google Earth Engine, we applied the classifier to other years in the same region. To some extent, the classifier's expansion in time is realized. The classified data mainly comes from the Landsat satellite series data available by Google Earth Engine. The classification effect is evaluated by the confusion matrix, and the results show that the overall accuracy exceeds 93.0% and kappa coefficient is 0.9 the accuracy of other years is also higher than 85%, it shows that we have a better and stable realization of sample migration and the expansion of classifier in time.
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