手写数字识别中机器学习算法的性能评价

S. Hamida, B. Cherradi, A. Raihani, H. Ouajji
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引用次数: 19

摘要

由于写法各异的手写体千变万化,手写体的识别一直是一项非常困难的任务。这种类型的智能系统应用于各个领域:支票处理、表格处理、考试手写答案的自动处理等。最后一个应用程序是本工作的主题。本文比较了几种用于复杂和多类问题分类的机器学习算法的性能。在这项工作中,我们利用了四种机器学习算法(k近邻、深度神经网络、决策树和支持向量机)来预测手写数字。训练和测试数据从包含预处理图像的MNIST数字数据库中提取。通过准确度、灵敏度和特异性等不同相似性度量得到的结果证实,与本文研究的其他分类器相比,深度神经网络获得的分类是最准确的。
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Performance Evaluation of Machine Learning Algorithms in Handwritten Digits Recognition
the recognition of handwritten characters has always been a very difficult task because of the many variations of handwritten characters with different writing styles. This type of intelligent systems is applied in various fields: check processing, processing of forms, automatic processing of handwritten answers to an examination, etc. This last application is the subject of this work. We compared in this paper the performances of some machine learning algorithms, used for the classification of complex and multiclass problems. In this work, we exploited four machine learning algorithms (K-Nearest Neighbors, Deep Neural Network, Decision Tree and Support Vector Machine) to predict handwritten digits. The training and testing data were extracted from the MNIST digit database containing pre-processed images. The results obtained using different similarity measures such as accuracy, sensitivity and specificity confirm that the classification obtained by deep neural networks is the most accurate compared to the other classifiers studied in this paper.
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