首页> 外文期刊>Journal of Imaging Science and Technology >Distance Measures in the Training Phase of Self-Organizing Map for Color Histogram Generation in Spectral Image Retrieval
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Distance Measures in the Training Phase of Self-Organizing Map for Color Histogram Generation in Spectral Image Retrieval

机译:自组织图训练阶段用于光谱直方图生成彩色直方图的距离度量

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摘要

The usefulness of different distance measures in the training phase of self-organizing map (SOM) for color histogram generation for spectral image retrieval purposes is examined. The calculation of the best-matching unit (BMU) in the training phase of SOM is done by using Euclidean distance, Kullback-Leibler distance, Jeffrey divergence, and CIEL*a*b* color difference as distance measures. One-dimensional SOMs are generated for two different data sets consisting of 1269 Munsell color chips and 1, 440, 000 color spectra collected from a real spectral image database. The suitability of the introduced measures is first evaluated by calculating the average color differences between the Munsell data set and its BMUs in the SOMs trained by Munsell data. The achieved results are validated by a practical application, in which the queries from a real spectral image database are performed. Furthermore, the ability of SOMs trained by different distance measures to distinguish between spectral images of real human skin and magazine prints of human skin is examined. The achieved results are promising and indicate that two-dimensional self-organizing maps, which are trained by using Euclidean distance and Jeffrey divergence as distance measure and color histograms that correspond the spectral images as training data, could be used for classifying spectral images.
机译:在自组织图(SOM)的训练阶段中,检查了不同距离度量对于彩色直方图生成以用于光谱图像检索的有用性。通过使用欧氏距离,Kullback-Leibler距离,Jeffrey发散度和CIEL * a * b *色差作为距离度量,可以完成SOM训练阶段的最佳匹配单位(BMU)的计算。为两个不同的数据集生成一维SOM,这些数据集包括1269个Munsell彩色芯片和从真实光谱图像数据库收集的1,440,000个光谱。首先通过计算Munsell数据训练后的SOM中的Munsell数据集与其BMU之间的平均色差来评估所引入措施的适用性。通过实际应用验证了所获得的结果,其中执行了来自真实光谱图像数据库的查询。此外,检查了通过不同距离度量训练的SOM区分真实人类皮肤的光谱图像和人类皮肤杂志印刷品的能力。所取得的结果是有希望的,并且表明可以通过使用欧几里得距离和杰弗里散度作为距离测量值来训练的二维自组织图和与光谱图像相对应的颜色直方图作为训练数据来进行训练,以对光谱图像进行分类。

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