基于高空间分辨率高光谱影像的水稻生长水平统计分析

K. Uto, Y. Kosugi, Jiro Sasaki
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引用次数: 2

摘要

低空成像系统获得的亚厘米空间分辨率的高光谱图像数据为我们提供了宝贵的生物化学信息。然而,由于BRDF、高光分量、遮阳等结构因素引起的光谱波动,使得空间细节信息难以利用。本文提出了一种基于空间高分辨率高光谱影像数据的水稻生长水平估算的统计方法。对光照直射下的植被区域进行提取,然后进行高斯混合建模,分离出植被区域内的不同部分,如水稻叶片和稻穗。利用高光分量的BRDF特性对植被区域进行简单的高光分量去除。提取的光谱数据被映射到由尺度因子耐受植被指数跨越的特征空间。采用带序约束的主成分分析(PCA)方法,生成了5个不同种植期稻田生长水平的量化指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical analysis of growth levels of rice paddy based on hyperspectral imagery with high spatial resolution
Hyperspectral image data with sub-centimeter spatial resolution acquired by a low-altitude imaging system provided us valuable insight for the biochemistry. However, it is rather difficult to utilize the spatially detailed information because of the spectral fluctuation caused by the structural factor, e.g. BRDF, specular components, shading. This paper provides a statistical method for the estimation of growth levels in rice paddy based on hyperspectral image data with spatially high resolution. The extraction of vegetation regions under direct sun is followed by gaussian mixture modeling to separate different parts in the vegetation regions, e.g. leaves and ears in rice paddy. BRDF characteristics of specular components are utilized for simple specular component removal from the vegetation regions. The extracted spectral data are mapped to a feature space spanned by scaling factor-tolerant vegetation indices. Principal component analysis (PCA) with order constraint is used to generate indices which quantify growth levels of 5 paddy fields with different planting dates.
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