基于置信度的阿拉伯手写离线识别模型自适应判别训练

P. Dreuw, G. Heigold, H. Ney
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引用次数: 35

摘要

本文提出了一种新的基于置信度的判别训练模型自适应方法,用于基于HMM的阿拉伯语手写识别系统,以处理不同的手写风格及其变化。目前大多数方法都是最大似然训练的HMM系统,并尝试使用作者自适应训练、无监督聚类或其他作者特定数据来调整其模型以适应不同的写作风格。基于最大互信息准则的判别训练用于训练写作者独立的手写模型。针对解码过程中的模型自适应问题,提出了一种基于无监督置信度的两步解码过程中单词和帧级别的判别训练方法。此外,训练标准被扩展到包含一个边际期限。在IFN/ENIT阿拉伯文手写体数据库上进行了实验,结果表明,本文提出的自适应方法可将单词错误率相对降低33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Confidence-Based Discriminative Training for Model Adaptation in Offline Arabic Handwriting Recognition
We present a novel confidence-based discriminative training for model adaptation approach for an HMM based Arabic handwriting recognition system to handle different handwriting styles and their variations.Most current approaches are maximum-likelihood trained HMM systems and try to adapt their models to different writing styles using writer adaptive training, unsupervised clustering, or additional writer specific data.Discriminative training based on the Maximum Mutual Information criterion is used to train writer independent handwriting models. For model adaptation during decoding, an unsupervised confidence-based discriminative training on a word and frame level within a two-pass decoding process is proposed. Additionally, the training criterion is extended to incorporate a margin term.The proposed methods are evaluated on the IFN/ENIT Arabic handwriting database, where the proposed novel adaptation approach can decrease the word-error-rate by 33% relative.
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