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Precise candidate selection for large character set recognition by confidence evaluation

机译:通过置信度评估精确选择大字符集的候选者

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This paper proposes a precise candidate selection method for large character set recognition by confidence evaluation of distance-based classifiers. The proposed method is applicable to a wide variety of distance metrics and experiments on Euclidean distance and city block distance have achieved promising results. By confidence evaluation, the distribution of distances is analyzed to derive the probabilities of classes in two steps: output probability evaluation and input probability inference. Using the input probabilities as confidences, several selection rules have been tested and the rule that selects the classes with high confidence ratio to the first rank class produced best results. The experiments were implemented on the ETL9B database and the results show that the proposed method selects about one-fourth as many candidates with accuracy preserved compared to the conventional method that selects a fixed number of candidates.
机译:提出了一种基于距离分类器的置信度评估的大字符集识别的精确候选选择方法。该方法适用于多种距离度量标准,欧氏距离和城市街区距离的实验取得了可喜的结果。通过置信度评估,分析了距离的分布以分两步得出类的概率:输出概率评估和输入概率推断。使用输入概率作为置信度,已经测试了多个选择规则,并且选择与第一等级类具有高置信度比率的类的规则产生了最佳结果。实验是在ETL9B数据库上进行的,结果表明,与选择固定数目的候选方法的传统方法相比,该方法选择的候选方法大约保留了四分之一的精度。

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