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Adaptive tangent distance classifier on recognition of handwritten digits

机译:手写数字识别的自适应切线距离分类器

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Simard et al. [16,17] proposed a transformation distance called "tangent distance" (TD) which can make pattern recognition be efficient. The key idea is to construct a distance measure which is invariant with respect to some chosen transformations. In this research, we provide a method using adaptive TD based on an idea inspired by "discriminant adaptive nearest neighbor" [7]. This method is relatively easy compared with many other complicated ones. A real handwritten recognition data set is used to illustrate our new method. Our results demonstrate that the proposed method gives lower classification error rates than those by standard implementation of neural networks and support vector machines and is as good as several other complicated approaches.
机译:Simard等。 [16,17]提出了一个转换距离,称为“切线距离”(TD),它可以使模式识别变得高效。关键思想是构造一个距离度量,该距离度量对于某些选定的变换是不变的。在这项研究中,我们基于“区分自适应最近邻” [7]的思想,提供了一种使用自适应TD的方法。与许多其他复杂方法相比,此方法相对容易。真实的手写识别数据集用于说明我们的新方法。我们的结果表明,与标准实现的神经网络和支持向量机相比,该方法的分类错误率更低,并且与其他几种复杂方法一样好。

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