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Multilevel Block Truncation Coding with diverse color spaces for image classification

机译:多级块截断与图像分类不同颜色空间的截断编码

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The paper depicts the use of Multilevel Block Truncation Coding for image classification. Feature vectors are extracted with four levels of Block Truncation Coding to classify the several categories of images for performance comparison in six different color spaces for the proposed methodology. Three databases out of which two are public databases and one is a generic database are considered for the experimentation. The two public datasets used are Coil Dataset and the Ponce Group 3D Photography Dataset respectively. The performance of the proposed classifier is tested on all three databases considered. In each of the considered color spaces improved performance is being observed with increasing levels of BTC and BTC level 4 is proved to be better as compared to other BTC levels. Overall Kekre's LUV color space has shown the best performance for BTC level 4 based image classification.
机译:本文描绘了使用多级块截断编码进行图像分类。 特征向量用四个级别的块截断编码提取,以对所提出的方法进行六种不同颜色空间中的若干类别的图像进行分类。 其中三个数据库是其中两个是公共数据库,一个是一个是通用数据库,被认为是实验。 使用的两个公共数据集分别是线圈数据集和PONCE组3D摄影数据集。 在考虑的所有三个数据库上测试了所提出的分类器的性能。 在每个考虑的颜色空间中,随着BTC水平的增加,被证明与其他BTC水平相比,随着BTC等级的增加,观察到改善的性能。 总体Kekre的LUV颜色空间已经为BTC级别的4级图像分类表示了最佳性能。

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