光谱数据缩减在小面积研究区受盐影响土壤检测中的有效性

Desert Pub Date : 2018-06-20 DOI:10.22059/JDESERT.2018.66357
M. Rahmati, N. Hamzehpour
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引用次数: 1

摘要

数据约简用于将大数据集聚合或合并为更小且可管理的信息片段,以便对不同属性进行快速准确的分类。然而,过度的空间或光谱数据缩减可能导致丢失或掩盖重要的辐射测量信息。因此,我们进行了这项研究,以评估不同光谱数据缩减算法的有效性,包括主成分分析(PCA)和最小噪声分数(MNF)变换、像素纯度指数(PPI),以及n维可视化(n-DV)算法,利用188个地面控制点旁的ETM+数据对受盐影响的土壤进行监督分类的准确性。结果显示,与未减少数据相比,数据减少导致分类结果减少约20%至30%。在小范围的研究中应用光谱数据约简算法不仅有支持作用,而且对分类结果有负面影响。因此,最好不要在小范围内使用算法。
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Effectiveness of spectral data reduction in detection of salt-affected soils in a small study area
Data reduction is used to aggregate or amalgamate the large data sets into smaller and manageable information pieces in order to fast and accurate classification of different attributes. However, excessive spatial or spectral data reduction may result in losing or masking important radiometric information. Therefore, we conducted this research to evaluate the effectiveness of the different spectral data reduction algorithms including Principle Component Analysis (PCA) and Minimum Noise Fraction (MNF) transformation, Pixel Purity Index (PPI), and n Dimensional Visualizer (n-DV) algorithms on accuracy of the supervised classification of the salt-affected soils applying ETM+ data beside 188 ground control points. Results revealed that data reduction caused around 20 to 30 % decreases in classification results compared to none reduced data. It seems that applying spectral data reduction algorithm in small study areas is not only supportive, but also has negative effects on classification results. Therefore, it may better to not to use the algorithms in small areas.
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