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A Revised Training Mechanism for AdaBoost Algorithm

机译:AdaBoost算法的修订训练机制

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摘要

Focusing on the disadvantages of classical AdaBoost algorithm, this paper mainly analyzes the issues of excessive training, overfitting for classifiers and time-consuming in the training process, and a new method is advanced to avoid the problems. The new method is to update the training samples in time, regulate the update rules of sample weights and buffer the computational results of sorted feature values. As a result, the method used for training a cascade license plate, the experimental results show that the new method does not lead to the issues of excessive training, overfitting and time-consuming like classical AdaBoost often does, and moreover, the training time is shorted to 50 percent with a high detection rate and a low false alarm rate.
机译:针对经典的AdaBoost算法的弊端,主要分析训练过度,分类器过拟合,训练过程费时的问题,并提出了避免这种问题的新方法。新方法是及时更新训练样本,调节样本权重的更新规则,并缓冲分类特征值的计算结果。结果,该方法用于级联车牌的训练,实验结果表明,该新方法不会像传统的AdaBoost那样引起过度训练,过拟合和费时的问题,而且训练时间为短路到50%,检测率高,误报率低。

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