Study and Observation of the Variations of Accuracies for Handwritten Digits Recognition with Various Hidden Layers and Epochs using Convolutional Neural Network

Rezoana Bente Arif, M. Siddique, Mohammad Mahmudur Rahman Khan, M. Oishe
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引用次数: 30

Abstract

Nowadays, deep learning can be employed to a wide ranges of fields including medicine, engineering, etc. In deep learning, Convolutional Neural Network (CNN) is extensively used in the pattern and sequence recognition, video analysis, natural language processing, spam detection, topic categorization, regression analysis, speech recognition, image classification, object detection, segmentation, face recognition, robotics, and control. The benefits associated with its near human level accuracies in large applications lead to the growing acceptance of CNN in recent years. The primary contribution of this paper is to analyze the impact of the pattern of the hidden layers of a CNN over the overall performance of the network. To demonstrate this influence, we applied neural network with different layers on the Modified National Institute of Standards and Technology (MNIST) dataset. Also, is to observe the variations of accuracies of the network for various numbers of hidden layers and epochs and to make comparison and contrast among them. The system is trained utilizing stochastic gradient and backpropagation algorithm and tested with feedforward algorithm.
基于卷积神经网络的不同隐层和隐点手写体数字识别准确率变化研究与观察
如今,深度学习可以应用于广泛的领域,包括医学、工程等。在深度学习中,卷积神经网络(CNN)被广泛应用于模式和序列识别、视频分析、自然语言处理、垃圾邮件检测、主题分类、回归分析、语音识别、图像分类、对象检测、分割、人脸识别、机器人和控制等领域。近年来,在大型应用中,其接近人类水平的准确性带来的好处导致CNN越来越被接受。本文的主要贡献是分析了CNN隐藏层的模式对网络整体性能的影响。为了证明这种影响,我们在修改后的美国国家标准与技术研究所(MNIST)数据集上应用了不同层的神经网络。二是观察不同隐层数和隐时代下网络精度的变化,并对其进行比较和对比。采用随机梯度和反向传播算法对系统进行训练,并采用前馈算法对系统进行测试。
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