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New classifier with reduced computational complexity

机译:具有减少计算复杂性的新分类器

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Proposes a new classifier architecture that can reduce the computational complexity substantially. In the proposed classifier, the authors store the distance between any pair of the classes and select some of the classes as a reference set. Then, the classifier calculates the distance of the input to a class as usual if the class is in the reference set; otherwise, it estimates the distance with the stored class distances and the distances to the reference classes. In the proposed classifier computational complexity of the classifier is reduced if the number of the reference classes is small and the distance estimation procedure is simple. The authors explain how to estimate the distances and how to select the reference set with the minimization of the misclassification risk. The authors designed a classifier for digit recognition based on the proposed method. The simulation result shows usefulness of the proposed design procedure for the classifier with reduced computational complexity.
机译:提出了一种可以大大降低计算复杂性的新分类器架构。在所提出的分类器中,作者将任何对类之间的距离存储在一起,并选择一些类作为参考集。然后,如果类在参考集中,则分类器将输入到类的距离计算为常规;否则,它估计与存储的类距离的距离和对参考类的距离。在所提出的分类器中,如果参考类的数量很小并且距离估计过程简单,则减少了分类器的计算复杂度。作者解释了如何估算距离以及如何选择参考集,以最小化错误分类风险。作者设计了一种基于所提出的方法的数字识别的分类器。仿真结果显示了具有减少计算复杂度的分类器的所提出的设计过程的有用性。

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