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Embedded Bernoulli Mixture HMMs for Continuous Handwritten Text Recognition

机译:嵌入式伯努利混合物HMM用于连续手写文本识别

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Hidden Markov Models (HMMs) are now widely used in off-line handwritten text recognition. As in speech recognition, they are usually built from shared, embedded HMMs at symbol level, in which state-conditional probability density functions are modelled with Gaussian mixtures. In contrast to speech recognition, however, it is unclear which kind of real-valued features should be used and, indeed, very different features sets are in use today. In this paper, we propose to by-pass feature extraction and directly fed columns of raw, binary image pixels into embedded Bernoulli mixture HMMs, that is, embedded HMMs in which the emission probabilities are modelled with Bernoulli mixtures. The idea is to ensure that no discriminative information is filtered out during feature extraction, which in some sense is integrated into the recognition model. Good empirical results are reported on the well-known IAM database.
机译:隐马尔可夫模型(HMM)现在广泛用于离线手写文本识别。与语音识别一样,它们通常由符号级别的共享嵌入式HMM构建,其中状态条件概率密度函数使用高斯混合建模。但是,与语音识别相反,目前尚不清楚应使用哪种实值特征,实际上,当今使用的特征集非常不同。在本文中,我们建议绕过特征提取并将原始的二进制图像像素的列直接馈送到嵌入式伯努利混合HMM中,即,使用伯努利混合物对发射概率进行建模的嵌入式HMM。这样做的目的是确保在特征提取过程中不会滤除任何歧视性信息,在某种意义上,这些信息已集成到识别模型中。在著名的IAM数据库上报告了良好的经验结果。

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