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Combining Slanted-Frame Classifiers for Improved HMM-Based Arabic Handwriting Recognition

机译:组合倾斜帧分类器以改进基于HMM的阿拉伯文手写识别

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摘要

The problem addressed in this study is the offline recognition of handwritten Arabic city names. The names are assumed to belong to a fixed lexicon of about 1,000 entries. A state-of-the-art classical right-left hidden Markov model (HMM)-based recognizer (reference system) using the sliding window approach is developed. The feature set includes both baseline-independent and baseline-dependent features. The analysis of the errors made by the recognizer shows that the inclination, overlap, and shifted positions of diacritical marks are major sources of errors. In this paper, we propose coping with these problems. Our approach relies on the combination of three homogeneous HMM-based classifiers. All classifiers have the same topology as the reference system and differ only in the orientation of the sliding window. We compare three combination schemes of these classifiers at the decision level. Our reported results on the benchmark IFN/ENIT database of Arabic Tunisian city names give a recognition rate higher than 90 percent accuracy and demonstrate the superiority of the neural network-based combination. Our results also show that the combination of classifiers performs better than a single classifier dealing with slant-corrected images and that the approach is robust for a wide range of orientation angles.
机译:本研究解决的问题是离线识别手写的阿拉伯城市名称。假定名称属于大约1,000个条目的固定词典。使用滑动窗口方法,开发了一种基于经典的左右经典隐马尔可夫模型(HMM)的识别器(参考系统)。功能集包括与基线无关和与基线有关的功能。识别器对错误的分析表明,变音标记的倾斜,重叠和移位位置是错误的主要来源。在本文中,我们建议应对这些问题。我们的方法依赖于三个基于HMM的同构分类器的组合。所有分类器都具有与参考系统相同的拓扑,并且仅在滑动窗口的方向上有所不同。我们在决策层比较了这些分类器的三种组合方案。我们在阿拉伯文突尼斯城市名称的基准IFN / ENIT数据库上报告的结果给出了90%以上的识别率,并证明了基于神经网络的组合的优越性。我们的结果还表明,分类器的组合比处理倾斜校正图像的单个分类器要好,并且该方法对于宽范围的方向角均具有鲁棒性。

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