基于MODIS影像的东北亚森林覆盖分类

A. Fu, Guoqing Sun, Zhifeng Guo, Dianzhong Wang
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引用次数: 14

摘要

近几十年来,由于森林火灾和大规模采伐,东西伯利亚和东北地区的森林生态系统发生了巨大变化。这些变化影响着当地的气候动态、经济活动和生物遗产,进而影响着全球碳平衡和气候变化。本文针对TM/ ETM+图像与MODIS数据相结合的森林覆盖区域的暗目标属性,提出了一种二维特征空间网格分割(FSGS)算法。该算法基于特征空间的统计签名和贝叶斯规则。与当地TM/ETM+分类结果比较,树木覆盖委员会的生产者精度可达90%左右。然后,利用决策树分类器将森林覆盖划分为不同的生物群系。和森林覆盖图分别与MODIS土地覆盖产品和全球土地覆盖2000(GLC2000)产品在面积和逐像元基础上进行了比较。
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Forest cover classification from MODIS images in Northeastern Asia
Forest ecosystem in Eastern Siberia and Northeastern China (ESNC) has been undergoing dramatic changes during the last several decades due to forest fires and massive logging. These changes affect climate dynamics, economic activity and living heritage in local region, further, to the global carbon balance and climate changes. In this paper, a 2D feature space grid split (FSGS) algorithm was developed to identify forests cover region by combined TM/ ETM+ images and MODIS datasets, due to its dark object attributes. This no-parametric algorithm was based on statistical signatures in feature space and Bayesian rule. The producer accuracy of tree cover commission can be approximately 90%, comparing with local TM/ETM+ classification results. Then, forests cover was stratified into different biomes by a decision tree classifier. and Forests cover map was respectively compared with MODIS land cover products and Global land cover 2000(GLC2000) products derived from images observed by VEGETATION (VGT) sensor on both areal and per-pixel bases.
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