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首页> 外文期刊>Malaysian Journal of Computer Science >Multiclass Test Feature Classifier for Texture Classification
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Multiclass Test Feature Classifier for Texture Classification

机译:用于纹理分类的多类测试特征分类器

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A new multi-class pattern classifier called ‘Test Feature Classifier’ is presented. It is based on training a recogniser by training samples of binary patterns and voting primitive scores depending on many trained templates called ‘test feature’, which serves as local evaluation of the features. The method is non-metric and does not misclassify any patterns once learned previously. The two-class version of test feature classifier was of high performance for searching textual region in complex images. In this paper, we extend it to handle multi-class problems and apply it for solving ill-class problems in texture classification. We show the performance of the classifier on more than 1000 real images and compare it with a linear distance-based classifier and a non-linear distance-based classifier. The experimental results of both simulations and real applications show that the proposed classifier has better performance than conventional ones.
机译:提出了一个称为“测试功能分类器”的新的多类模式分类器。它基于通过训练称为“测试特征”的许多受过训练的模板来训练二进制模式和投票原始分数的样本来训练识别器,该模板用作对特征的局部评估。该方法是非度量标准的,一旦先前学习过,就不会对任何模式进行错误分类。测试特征分类器的两类版本在搜索复杂图像中的文本区域方面具有很高的性能。在本文中,我们将其扩展为处理多类问题,并将其应用于解决纹理分类中的不良类问题。我们在超过1000个真实图像上显示了分类器的性能,并将其与基于线性距离的分类器和基于非线性距离的分类器进行了比较。仿真和实际应用的实验结果表明,提出的分类器具有比传统分类器更好的性能。

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