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Handwritten Digit Recognition Based on Pooling SVM-Classifiers Using Orientation and Concavity Based Features

机译:基于方向和凹度特征的基于合并SVM分类器的手写数字识别

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In order to increase the performance in the handwritten digit recognition field, researchers commonly combine a variety of features to represent a pattern. This approach has showed to be very effective in practice. The classical approach to combine features is by concatenating the underlying feature vectors. A drawback of this approach is that it could generate high-dimensional descriptors, which increases the complexity of the training process. Instead, we propose to use a pooling based classifier, that allow us to get not only a faster training process but also outperforming results. For evaluation, we used two state-of-the-art handwritten digit datasets: CVL and MNIST. In addition, we show that a simple rectangular spatial division, that characterize our descriptors, yields competitive results and a smaller computation cost with respect to other more complex zoning techniques.
机译:为了提高手写数字识别领域的性能,研究人员通常结合使用多种功能来表示一种模式。实践证明这种方法非常有效。组合特征的经典方法是串联基础特征向量。这种方法的缺点是它可能生成高维描述符,从而增加了训练过程的复杂性。相反,我们建议使用基于池的分类器,该分类器不仅可以使我们获得更快的训练过程,而且可以使结果表现出众。为了进行评估,我们使用了两个最先进的手写数字数据集:CVL和MNIST。另外,我们表明,相对于其他更复杂的分区技术而言,表征我们的描述符的简单矩形空间划分可产生有竞争力的结果,并具有较小的计算成本。

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