一种新的多分类器归一化似然的扭曲技术及其在线/离线联合识别日文字符的有效性

Ondrej Velek, Stefan Jäger, M. Nakagawa
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引用次数: 34

摘要

我们提出了一种在多个分类器组合之前对其可能性进行归一化的技术。我们的技术考虑了分类器特定的似然特征,并将它们映射到一个共同的、理想的特征,允许在任意组合方案下进行公平组合。对于每个分类器,一个简单的扭曲过程将似然与累积识别率对齐,使识别率成为似然的均匀递增函数。为了组合归一化似然值,我们研究了几种基本组合规则,如和规则或最大规则。与最佳的单一识别率相比,我们取得了超过5%的显著性能增益,这既显示了我们的分类器组合方法的有效性,也显示了将在线日文字符识别与笔画顺序和笔画数独立的离线识别相结合的好处。此外,与其他基本组合规则相比,我们的实验为求和规则的良好性能提供了额外的经验证据,正如其他研究组已经观察到的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new warping technique for normalizing likelihood of multiple classifiers and its effectiveness in combined on-line/off-line japanese character recognition
We propose a technique for normalizing likelihood of multiple classifiers prior to their combination. Our technique takes classifier-specific likelihood characteristics into account and maps them to a common, ideal characteristic allowing fair combination under arbitrary combination schemes. For each classifier, a simple warping process aligns the likelihood with the accumulated recognition rate, so that recognition rate becomes a uniformly increasing function of likelihood. For combining normalized likelihood values, we investigate several elementary combination rules, such as sum-rule or max-rule. We achieved a significant performance gain of more than five percent, compared to the best single recognition rate, showing both the effectiveness of our method for classifier combination and the benefit of combining on-line Japanese character recognition with stroke order and stroke number independent off-line recognition. Moreover, our experiments provide additional empirical evidence for the good performance of the sum rule in comparison with other elementary combination rules, as has already been observed by other research groups.
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