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Textural characterization from various representations of MERIS data

机译:MERIS数据的各种表示形式的纹理表征

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Texture characteristics of MERIS data based on the Gray-Level Co-occurrence Matrices (GLCM) are explored in this work as far as their classification capabilities are concerned. Classification is employed in order to reveal four different land cover types, namely: water, forest, field and urban areas. The classification performance for each cover type is studied separately on each spectral band, while the combined performance of the most promising spectral bands is explored. In addition to GLCM, spectral co-occurrence matrices (SCM) formed by measuring the transition from band-to-band are employed for improving classification results. Conventional classifiers and voting techniques are used for the classification stage. Furthermore, the properties of texture characteristics are explored on various types of grayscale or RGB representations of the multispectral data, obtained by means of principal components analysis (PCA), non-negative matrix factorization (NMF) and information theory. Finally, the accuracy of the proposed classification approach is compared with that of the minimum distance classifier.
机译:就其分类能力而言,在这项工作中探索了基于灰度共生矩阵(GLCM)的MERIS数据的纹理特征。使用分类是为了揭示四种不同的土地覆盖类型,即:水,森林,田野和市区。在每个光谱带上分别研究每种封面类型的分类性能,同时探索最有希望的光谱带的组合性能。除了GLCM之外,还采用了通过测量从一个频带到另一个频带的过渡而形成的频谱共现矩阵(SCM),以改善分类结果。常规分类器和投票技术用于分类阶段。此外,通过主成分分析(PCA),非负矩阵分解(NMF)和信息论获得了多光谱数据的各种类型的灰度或RGB表示,探索了纹理特征的属性。最后,将提出的分类方法的准确性与最小距离分类器的准确性进行比较。

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