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Sensitivity of hyperspectral classification algorithms to training sample size

机译:高光谱分类算法对训练样本大小的敏感性

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Algorithms that exploit hyperspectral imagery often encounter problems related to the high dimensionality of the data, particularly when the amount of training data is limited. Recently, two algorithms were proposed to alleviate the small sample size problem - one is based on employing a Multi-Classifier Decision Fusion (MCDF) in the raw reflectance domain, and the other employed the MCDF framework in the Discrete Wavelet Transform domain (DWT-MCDF). This paper investigates the sensitivity of conventional single classifier based classification approaches, as well as MCDF and DWT-MCDF to variations in the amount of data employed for training the classification system. The hyperspectral data in this experiment was obtained using an airborne hyperspectral imager used by SpecTIR™. The results of the experimental analysis show that for the given application, the MCDF and DWT-MCDF algorithms are significantly less sensitive than the conventional algorithms to limited training data. PCA consistently results in overall accuracies of about 35%. LDA accuracies are very high, about 75%, when there is an abundance of training data - about 10X (i.e. number of training samples is 10 times the number of spectral bands); remains above 60% for training data abundances of 2X and higher; but dramatically decreases to ∼20% for abundances of 1X. MCDF results in accuracies ranging between 65% and 75% for training data abundance of 3X and higher, but the accuracies drop to ∼60% for 2X and ∼55% for 1X. DWT-MCDF results in high accuracies with the least sensitivity to training data abundance. Its accuracies range between ∼60–65% for abundances of 1X to 10X.
机译:利用高光谱图像的算法经常遇到与数据的高维度相关的问题,特别是当训练数据的限制量时。最近,提出了两种算法来缓解小样本大小问题 - 一个是基于在原始反射域中采用多分类器决策融合(MCDF),另一个基于离散小波变换域中的MCDF框架(DWT- MCDF)。本文研究了基于传统的单一分类器的分类方法的敏感性,以及MCDF和DWT-MCDF在用于训练分类系统的数据量的变化。使用Spectir™使用的空气过高光谱成像器获得该实验中的高光谱数据。实验分析结果表明,对于给定的应用,MCDF和DWT-MCDF算法明显不如传统算法到有限训练数据的敏感性。 PCA始终如一地导致总体精度约为35%。 LDA精度非常高,大约75%,当有丰富的训练数据 - 约10x(即训练样本数量是频谱带的数量的10倍);培训数据丰富超过60%,培训2倍和更高;但大量减少到1X丰富的〜20%。 MCDF的准确性值为65%和75%,培训数据丰富3倍,更高,但精度降至2x和〜55%的〜60%,1倍。 DWT-MCDF导致高精度,具有对培训数据丰富的敏感性最小。它的精度范围在〜60-65%之间为1x至10x的丰富。

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