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Medical Prescription Recognition using Machine Learning

机译:医疗处方识别使用机器学习

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Admittedly, because of how busy doctors are nowadays, they tend to scribble unreadable prescribed medicines which leads to the problem of misinterpreting medicine names. Patients are sometimes curious to know information about their prescribed medicines before purchasing them. Recently, developers have been searching for a method to address this problem efficiently but, no technique leads to full recognition of medicine names due to the bad handwriting of doctors and its variety so that leads us to machine learning where the system will learn various types of handwritings for the same medicine to be able to recognize new handwritings. This paper proposed a system that presents a solution for both the pharmacist and the patient through a mobile application that recognizes handwritten medicine names and returns a readable digital text of the medicine and its dose. The System identifies the medicines' names and the doses for the collected data set with some, pre-processing techniques like image subtraction, noise reduction, and image resizing. After that, the pre-processed images will undergo some processing as it will be classified and feature extracted through Convolutional Neural Network and finally Optical Character Recognition technique applied on the medicines with low accuracy in the post-processing phase to identify their names by comparing the result with the dataset containing all the medicines. This will help in diminishing the instances of distortion of medication names assisting pharmacists in limiting their doubts. The proposed system tested on different real cases, and accuracy has reached 70% using (CNN) model.
机译:诚然,由于繁忙的医生如何如今,他们往往涂鸦不可读规定的药品,导致误读药名的问题。患者有时会好奇,在购买前了解他们的处方药信息。最近,开发商一直在寻找一种方法来有效地解决这个问题,但没有技术导致了充分的肯定药名的,由于医生的字写得不好,种类,以便使我们的机器学习,其中系统将学习各种类型的对于同样的药笔迹,以便能够识别新的笔迹。本文提出了一个系统,礼物药师,并通过识别手写的药品名,并返回药物及其剂量的可读数字文本的移动应用程序的病人既解决方案。该系统识别该药品的名称和剂量所收集的数据与一些设置,前处理等图像相减,降噪和图像大小调整的技术。在此之后,所述预处理的图像将经历一些处理,因为它会被分类和特征通过卷积神经网络提取和最后的光学字符识别技术来施加与在后处理阶段低精度的药剂,以确定它们的名称通过比较包含所有的药品数据集的结果。这将有助于减少用药名协助药剂师在限制自己的怀疑失真的情况。所提出的系统测试了不同的真实案例,准确性使用(CNN)模型达到了70%。

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