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Co-occurrence Matrix and Self-Organizing Map based query from spectral image database

机译:来自光谱图像数据库的基于基于矩阵的共同发生矩阵和自组织地图

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A co-occurrence matrix and Self-Organizing Map (SOM) based technique for searching images from a spectral image database is proposed. At first the SOM is trained and the Best Matching Unit (BMU) histogram is created for every spectral image of a database. Next, the texture-histogram is calculated from the co-occurrence matrices, generated using the 1 st inner product images of the spectral images. BMU-histogram and the texture-histogram are combined to one feature histogram and these histograms, generated for each spectral image of a database, are saved to a histogram database. The dissimilarities between the histogram of the query image and the histograms of the database are calculated using different distance measures, more precisely Euclidean distance, dynamic partial distance and Jeffrey divergence. Finally, the images are ordered according to the histogram dissimilarity. The results using a real spectral image database are given.
机译:提出了一种用于从频谱图像数据库搜索图像的基于服务的共发生矩阵和自组织地图(SOM)技术。首先,训练SOM,并且为数据库的每个光谱图像创建最佳匹配单元(BMU)直方图。接下来,从共发生矩阵计算纹理直方图,使用光谱图像的1个ST内部产品图像生成。 BMU-Teatogram和纹理直方图组合到一个特征直方图,并且对于数据库的每个光谱图像生成的这些直方图被保存到直方图数据库。使用不同距离测量计算查询图像的直方图和数据库的直方图之间的异化,更精确地欧几里德距离,动态部分距离和杰弗里发散。最后,根据直方图相似性订购图像。给出了使用真实光谱图像数据库的结果。

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