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The Writer Identification Algorithm Based on Subspace

机译:基于子空间的作者识别算法

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摘要

A new method using feature subspace for writer identification is proposed in this paper. The current writer identification algorithms are always that the more the extraction features the better the classifier result. However it will result in excessive calculational cost on classifier identification process. On the basis of these issues, after we obtain the high-dimensional features, first we extract the more useful features to compose of the subspace, and then carry on the identification process. It shows that this new method, compared with the classical method, not only achieves better identification results but also greatly reduces the elapsed time on computation of the identification process.
机译:提出了一种使用特征子空间进行作者识别的新方法。当前的作者识别算法始终是,提取特征越多,分类器结果越好。但是,这将导致分类器识别过程的计算成本过高。在这些问题的基础上,获得高维特征后,首先提取出更有用的特征来构成子空间,然后进行识别过程。结果表明,与传统方法相比,该新方法不仅取得了较好的识别效果,而且大大减少了识别过程的计算时间。

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