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Fuzzy spectral and spatial feature integration for classification of nonferrous materials in hyperspectral data

机译:模糊光谱和空间特征集成用于高光谱数据中有色金属的分类

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摘要

Hyperspectral data allows the construction of more elaborate models to sample the properties of the nonferrous materials than the standard RGB color representation. In this paper, the nonferrous waste materials are studied as they cannot be sorted by classical procedures due to their color, weight and shape similarities. The experimental results presented in this paper reveal that factors such as the various levels of oxidization of the waste materials and the slight differences in their chemical composition preclude the use of the spectral features in a simplistic manner for robust material classification. To address these problems, the proposed FUSSER (fuzzy spectral and spatial classifier) algorithm detailed in this paper merges the spectral and spatial features to obtain a combined feature vector that is able to better sample the properties of the nonferrous materials than the single pixel spectral features when applied to the construction of multivariate Gaussian distributions. This approach allows the implementation of statistical region merging techniques in order to increase the performance of the classification process. To achieve an efficient implementation, the dimensionality of the hyperspectral data is reduced by constructing bio-inspired spectral fuzzy sets that minimize the amount of redundant information contained in adjacent hyperspectral bands. The experimental results indicate that the proposed algorithm increased the overall classification rate from 44% using RGB data up to 98% when the spectral-spatial features are used for nonferrous material classification.
机译:与标准RGB颜色表示相比,高光谱数据允许构建更精细的模型以对有色金属材料的属性进行采样。本文对有色金属废料进行了研究,因为它们的颜色,重量和形状相似,因此无法通过经典程序进行分类。本文介绍的实验结果表明,诸如废料的各种氧化程度以及其化学成分的细微差异等因素,使得无法以简单的方式使用光谱特征来进行可靠的物料分类。为了解决这些问题,本文中详细介绍的拟议FUSSER(模糊光谱和空间分类器)算法将光谱和空间特征合并以获得组合特征向量,该特征向量比单像素光谱特征能够更好地对有色金属材料进行采样当应用于多元高斯分布的构造时。此方法允许实施统计区域合并技术,以提高分类过程的性能。为了实现有效的实现,通过构建生物启发的光谱模糊集来减少高光谱数据的维数,该光谱模糊集将相邻高光谱带中包含的冗余信息的数量最小化。实验结果表明,当光谱空间特征用于有色金属分类时,该算法将使用RGB数据的总分类率从44%提高到98%。

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