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Design of Adaptive Feature Extraction Algorithm Based on Fuzzy Classifier in Hyperspectral Imagery Classification for Big Data Analysis

机译:基于模糊分类器的自适应特征提取算法在大型数据分析中的超光谱图像分类

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We proposed a new adaptive feature extraction (FEA) approach that integrates concepts of per-pixel/field classification and spectral ummixing. It combines their advantages in adaptive feature selection while minimizing the disadvantages associated with the high-complexity of each technique. The approach consists of local gradients calculation, reference clusters determination, prototype classification using fuzzy classifier, and feature vectors selection. Multiple experiments were performed using a simulated hyperspectral cube composed by 123 samples and 1254 features and classification was done only for verification purposes. Cross-validation demonstrated that FEA generated an average improvement of 7% on the misclassification error when compared to full feature analysis.
机译:我们提出了一种新的自适应特征提取(FEA)方法,它集成了每像素/场分类和光谱umixing的概念。它结合了它们在自适应特征选择中的优点,同时最小化与每个技术的高复杂性相关的缺点。该方法包括本地梯度计算,参考集群确定,使用模糊分类器的原型分类,以及特征向量选择。使用由123个样品组成的模拟高光谱分比进行多次实验,并且仅用于验证目的的1254个特征和分类。交叉验证表明,与完全特征分析相比,FEA在错误分类误差时产生了7%的平均改善。

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