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An approach based on feature fusion for the recognition of isolated handwritten Kannada numerals

机译:一种基于特征融合的孤立卡纳达语手写数字识别方法

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An increase in data size, number of classes, dimension of the feature space and interclass separability in any pattern classification task, affect the performance of any classifier. It is essential to know the effect of the training dataset size on the recognition performance of a feature extraction method and classifier. In this paper, an attempt is made to measure the performance of the classifier by testing the classifier with two different datasets of different sizes. A desirable recognition performance can be achieved by data fusion in any practical classification applications, if the number of classes and multiple feature sets for pattern samples are given. A framework for feature selection and feature fusion has been proposed in this paper to increase the performance of classification. From the experimental results it is seen that there is an increase of 13.20% in the recognition accuracy.
机译:在任何模式分类任务中,数据大小,类数,特征空间尺寸和类间可分离性的增加都会影响任何分类器的性能。必须了解训练数据集大小对特征提取方法和分类器的识别性能的影响。在本文中,尝试通过使用两个具有不同大小的不同数据集测试分类器来衡量分类器的性能。如果给出了模式样本的类数和多个特征集,则可以通过在任何实际分类应用中进行数据融合来实现理想的识别性能。本文提出了一种用于特征选择和特征融合的框架,以提高分类的性能。从实验结果可以看出,识别精度提高了13.20%。

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