模糊匹配算法在医生手写识别中的应用

R. Patil, Prasad Peshave, Milind Kamble
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引用次数: 0

摘要

医生手写的处方通常难以辨认。医学术语的不确定性可能带来可怕的后果。提出了一种有效识别医生手写药品名称的方法。在多位医生的帮助下,汇编了600张图像的语料库。一份详尽的清单列出了50种药物。使用卷积循环神经网络(CRNN) -连接时间分类(CTC)模型进行识别,准确率为93.3%。为了处理识别文本中产生的错误,对编辑距离方法进行了进一步的实现和分析。Damerau-Levenshtein距离法被认为是最合适的,为药品名称识别提供了一个基础良好的系统。
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Application of Fuzzy Matching Algorithms for Doctors Handwriting Recognition
Doctor's handwritten prescriptions are often known to be indecipherable. Uncertainty in medical terms can have dire consequences. A method to effectively recognize medicine names written in doctor's handwriting is proposed in this paper. A corpus of 600 images is compiled with the help of multiple doctors. An exhaustive list of 50 medicines is used for the same. Recognition is performed using the Convolutional Recurrent Neural Network (CRNN) - Connectionist Temporal Classification (CTC) model which results in 93.3 % accuracy. In order to deal with errors produced in the recognized text, edit distance methods are further implemented and analyzed. Damerau-Levenshtein distance method is deemed to be the most suitable, yielding a well-grounded system for medicine name recognition.
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