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Offline Isolated Handwritten Thai OCR Using Island-Based Projection with N-Gram Models and Hidden Markov Models

机译:离线使用基于岛的投影与N-Gram模型和隐藏的马尔可夫模特隔离手写的泰国OCR

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Many traditional works on offline Thai handwritten character recognition use a set of local features including circles, concavity, endpoints and lines to recognize hand-printed characters. However, in natural handwriting, these local features are often missed due to fast writing, resulting in dramatically reduced recognition accuracy. Instead of using such local features, this paper presents a method to extract features from handwritten characters using so-called multi-directional island-based projection. Two statistical recognition approaches using interpolated n-gram model (n-gram) and hidden Markov model (HMM) are also proposed. The performance of our feature extraction and recognition methods is investigated using nearly 23,400 hand-printed and natural-written characters, collected from 25 subjects. The results showed that, in situations where local features are hard to detect, both n-gram and HMM approaches achieved up to 96-99% accuracy for close tests and 84-90% for open tests.
机译:许多传统的工作作品在离线泰语手写字符识别使用一组本地特征,包括圆,凹,端点和线条来识别手工打印的字符。然而,在自然的笔迹中,这些本地特征通常由于快速写入而错过,导致识别精度显着降低。本文代替使用此类本地特征,提供了一种使用所谓的基于多向岛的投影从手写字符中提取特征的方法。还提出了使用内插N-GRAM模型(N-GRAM)和隐马尔可夫模型(HMM)的两个统计识别方法。使用从25个科目收集的近23,400名手印和自然书面特征来研究我们的特征提取和识别方法的性能。结果表明,在局部特征难以检测的情况下,N-GRAM和HMM的方法均可达到高达96-99%的精度,用于接近测试,开放式测试84-90%。

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