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Combining diverse on-line and off-line systems for handwritten text line recognition

机译:结合各种在线和离线系统进行手写文本行识别

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In this paper we present a multiple classifier system (MCS) for on-line handwriting recognition. The MCS combines several individual recognition systems based on hidden Markov models (HMMs) and bidirectional long short-term memory networks (BLSTM). Beside using two different recognition architectures (HMM and BLSTM), we use various feature sets based on on-line and off-line features to obtain diverse recognizers. Furthermore, we generate a number of different neural network recognizers by changing the initialization parameters. To combine the word sequences output by the recognizers, we incrementally align these sequences using the recognizer output voting error reduction framework (ROVER). For deriving the final decision, different voting strategies are applied. The best combination ensemble has a recognition rate of 84.13%, which is significantly higher than the 83.64% achieved if only one recognition architecture (HMM or BLSTM) is used for the combination, and even remarkably higher than the 81.26% achieved by the best individual classifier. To demonstrate the high performance of the classification system, the results are compared with two widely used commercial recognizers from Microsoft and Vision Objects.
机译:在本文中,我们提出了一种用于在线手写识别的多分类器系统(MCS)。 MCS结合了几种基于隐马尔可夫模型(HMM)和双向长期短期记忆网络(BLSTM)的个体识别系统。除了使用两种不同的识别架构(HMM和BLSTM)之外,我们还使用基于在线和离线功能的各种功能集来获得不同的识别器。此外,我们通过更改初始化参数来生成许多不同的神经网络识别器。为了组合识别器输出的单词序列,我们使用识别器输出投票错误减少框架(ROVER)逐步对齐这些序列。为了得出最终决定,采用了不同的投票策略。最佳组合的识别率达到84.13%,明显高于仅使用一种识别体系结构(HMM或BLSTM)进行组合时的识别率,达到83.64%,甚至明显高于最佳个人的识别率81.26%。分类器。为了证明分类系统的高性能,将结果与Microsoft和Vision Objects的两种广泛使用的商业识别器进行了比较。

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