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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >FEATURE SELECTION FOR HMM AND BLSTM BASED HANDWRITING RECOGNITION OF WHITEBOARD NOTES
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FEATURE SELECTION FOR HMM AND BLSTM BASED HANDWRITING RECOGNITION OF WHITEBOARD NOTES

机译:基于HMM和BLSTM的手写板识别的特征选择

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摘要

In this paper, we describe feature selection experiments for online handwriting recognition. We investigated a set of 25 online and pseudo-offline features to find out which features are important and which features may be redundant. To analyze the saliency of the features, we applied a sequential forward and a sequential backward search on the feature set. A hidden Markov model and a neural network based recognizer have been used as recognition engines. In our experiments, we obtained interesting results. Using a set of only five features, we achieved a performance similar to that of the reference system that uses all 25 features. The five selected features have a low correlation and have been the top choices during the first iterations of the forward search with both recognizers. Furthermore, for both recognizers, subsets have been identified that outperform the reference system with statistical significance. In order to assess the results more rigorously, we have compared our recognizer with the widely used commercial recognizer from Microsoft.
机译:在本文中,我们描述了用于在线手写识别的特征选择实验。我们调查了25种在线和伪离线功能,以找出哪些功能很重要,哪些功能可能是多余的。为了分析特征的显着性,我们对特征集应用了顺序向前搜索和顺序向后搜索。隐藏的马尔可夫模型和基于神经网络的识别器已被用作识别引擎。在我们的实验中,我们获得了有趣的结果。仅使用一组五个功能,我们就获得了与使用全部25个功能的参考系统相似的性能。五个选定的特征具有较低的相关性,并且在两个识别器的正向搜索的第一次迭代中一直是首选。此外,对于两个识别器,已识别出具有统计意义的性能优于参考系统的子集。为了更严格地评估结果,我们将识别器与Microsoft广泛使用的商业识别器进行了比较。

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