Handwritten Digit Recognition Using CNN

Mayank Jain, Gagandeep Kaur, Muhammad Parvez Quamar, Harshit Gupta
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引用次数: 9

Abstract

The issue of transcribed digit acknowledgment has for some time been an open issue in the field of example order. A few examined have demonstrated that Neural Network has an incredible execution in information arrangement. The fundamental target of this paper is to give effective and solid procedures to acknowledgment of transcribed numerical by looking at different existing arrangement models. This paper thinks about the exhibition of Convolutional Neural Network (CCN). Results demonstrate that CNN classifier beat over Neural Network with critical improved computational effectiveness without relinquishing execution. Handwritten digit recognition can be performed using the Convolutional neural network from Machine Learning. Using the MNIST (Modified National Institute of Standards and Technologies) database and compiling with the CNN gives the basic structure of my project development. So, basically to perform the model we need some libraries such as NumPy, ‘Pandas’, TensorFlow, Keras. These are the main structure on which my main project stands. MNIST data contains about 70,000 images of handwritten digits from 0–9. So, it is a class 10 classification model. This dataset is divided into 2 parts i.e. Training and Test dataset. Image representation as 28*28 matrix where each cell contains grayscale pixel value.
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使用CNN的手写数字识别
一段时间以来,转录数字确认问题一直是示例顺序领域的一个开放问题。一些研究表明,神经网络在信息排列方面具有令人难以置信的执行力。本文的基本目标是通过对现有不同排列模式的考察,给出有效、可靠的转录数字识别程序。本文对卷积神经网络(CCN)的表现进行了思考。结果表明,CNN分类器在不放弃执行的情况下,以显著提高的计算效率击败了神经网络。手写数字识别可以使用机器学习中的卷积神经网络来执行。使用MNIST(修改后的国家标准与技术研究所)数据库并与CNN进行编译,给出了我的项目开发的基本结构。所以,基本上为了执行模型,我们需要一些库,比如NumPy, ' Pandas ', TensorFlow, Keras。这些是我的主要项目的主要结构。MNIST数据包含大约7万张从0到9的手写数字图像。因此,它是一个10类分类模型。该数据集分为训练数据集和测试数据集两部分。图像表示为28*28矩阵,其中每个单元格包含灰度像素值。
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