基于多时相HJ-1 CCD影像的面向对象土地覆盖分类——以山东省中部地区为例

Hongkui Zhou, Shuhe Zhao, Yun-xiao Luo, Lei Tan, A. Wang, Kexun He
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引用次数: 0

摘要

研究了基于多时相遥感影像的面向对象土地覆盖分类方法。提出了利用多时相HJ-1 CCD影像和其他辅助数据构建规则的方法对鲁中地区不同土地覆盖类型进行分类。分析了植被指数(Enhanced vegetation index, EVI)和NDVI的季节动态。植被指数时间序列的多时相影像可以帮助区分森林类型。考虑到植被分类的困难,特别是山区,利用DEM、坡度、空间特征和先验知识等更多的信息。土地覆盖分类总体精度为80.1%,Kappa系数为0.76。结果表明,除了光谱信息外,纹理、DEM、坡度和辅助数据对土地覆盖分类也非常有用。多时相信息可以显著改善植被分类结果,同时也具有很大的开发潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-oriented land cover classification using multi-temporal HJ-1 CCD imagery: A case study in central Shandong province, China
This paper focuses on object-oriented land cover classification using multi-temporal remotely sensed imagery. We proposed an approach by building rules using multi-temporal HJ-1 CCD imagery and other auxiliary data to classify various land cover types in central Shandong province. We analyzed the seasonal dynamics of vegetation indices (EVI (Enhanced Vegetation index) and NDVI). Vegetation index time series of multi-temporal images can help differentiate forest types. Given the difficulties of vegetation classification, especially in mountainous area, more information available such as DEM, slope, spatial features and priori knowledge were also utilized. The overall accuracy and Kappa coefficient of land cover classification are 80.1% and 0.76, respectively. The results show that besides the spectral information, texture, DEM, slope and auxiliary data are very useful for land cover classification. Multi-temporal information can improve the vegetation classification result significantly and meanwhile has much potential to be explored.
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