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林业科学 ›› 2007, Vol. 43 ›› Issue (01): 84-89.doi: 10.11707/j.1001-7488.20070114

• 论文及研究报告 • 上一篇    下一篇

高光谱数据森林类型统计模式识别方法比较评价

陈尔学1 李增元1 谭炳香1 梁毓照2 张则路2   

  1. 1.中国林业科学研究院资源信息研究所,北京100091;2.吉林省汪清林业局,汪清133200
  • 收稿日期:2005-05-25 修回日期:1900-01-01 出版日期:2007-01-25 发布日期:2007-01-25

Validation of Statistic Based Forest Types Classification Methods Using Hyperspectral Data

Chen Erxue1,Li Zengyuan1,Tan Bingxiang1,Liang Yuzhao2,Zhang Zelu2   

  1. 1.Institue of Forest Resources Information Techniques, CAF Beijing 100091; 2.Wangqing Forest Bureau of Jilin Province Wangqing 133200
  • Received:2005-05-25 Revised:1900-01-01 Online:2007-01-25 Published:2007-01-25

摘要:

在我国东北地区获取EO-1 Hyperion高光谱数据,以高空间分辨率的全色SPOT-5数据及其影像分割结果为辅助,通过外业测量获取真实可靠的森林类型空间分布数据。以这些数据为地面实状数据,对现代先进的统计模式识别方法用于森林类型识别的效果进行比较评价,总结可以有效解决有限样本条件下高光谱分类问题的基于统计模式识别的森林类型分类技术方案。评价结果表明:对高光谱数据进行降维处理,并采用更加有效的二阶统计量估计方法,进而应用将空间上下文信息和光谱信息相结合的分类算法,如ECHO,可以有效提高高光谱数据森林类型的识别精度。

关键词: EO-1 Hyperion, 高光谱, 统计模式识别, 森林类型

Abstract:

With much higher spectral resolution, hyperspectral remote sensing data has higher potential capability to identify land cover types than traditional multispectral data. But under limited training sample size, increased dimension of remote sensing data means decreased samples/dimension ratio, which can lead to low classification accuracy if common statistic based pattern classification methods were used. One scene of EO-1 Hyperion hyperspectral data was acquired for the test site in north-east of China. In order to aid for ground true information collection, 2.5 m SPOT-5 PAN image was segmented into self-closure polygons. Detailed ground true data was surveyed according to the boundary of each polygon. Based on these ground true data, the hyperspectral data was used to validate the forest types identification accuracy of several advanced statistic classification methods. Finally, one classification scheme being able to effectively solve the small train sample problems for forest type classification using hyperspectral data was suggested. It was shown that forest type classification accuracy can be improved if advanced feature extraction method, much more effective second order statistic parameter estimation method, and context-sensitive samples classifier such as ECHO was applied.

Key words: EO-1 Hyperion, hyperspectral, statistic pattern recognition, forest type