手写体数字识别的分类方法综述

Ira Tuba, Una Tuba, M. Veinovic
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引用次数: 0

摘要

介绍/目的:本文概述了在MNIST数据集上测试的手写数字识别方法。方法:从线性分类器到卷积神经网络,对应用于手写体数字识别问题的不同分类器的发展进行分析、综合和比较。结果:使用训练集和测试集在MNIST数据集上测试的手写体数字识别分类准确率高于99.5%,其中最成功的方法是卷积神经网络。结论:手写数字识别是许多实际应用中的一个问题。准确识别各种笔迹,特别是数字是一项研究了几十年的任务,本文总结了已经取得的成果。卷积神经网络的分类效果最好,而线性分类器的分类效果最差。如果对数据集进行扩展,卷积神经网络可以得到更好的结果。
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Classification methods for handwritten digit recognition: A survey
Introduction/purpose: This paper provides a survey of handwritten digit recognition methods tested on the MNIST dataset. Methods: The paper analyzes, synthesizes and compares the development of different classifiers applied to the handwritten digit recognition problem, from linear classifiers to convolutional neural networks. Results: Handwritten digit recognition classification accuracy tested on the MNIST dataset while using training and testing sets is now higher than 99.5% and the most successful method is a convolutional neural network. Conclusions: Handwritten digit recognition is a problem with numerous real-life applications. Accurate recognition of various handwriting styles, specifically digits is a task studied for decades and this paper summarizes the achieved results. The best results have been achieved with convolutional neural networks while the worst methods are linear classifiers. The convolutional neural networks give better results if the dataset is expended with data augmentation.
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12 weeks
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