DFN中的卷积和全连通层

IF 0.5 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Mian Mian Lau, K. Lim
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引用次数: 1

摘要

深度前馈网络(Deep feedforward network, DFN)是目前已知的用于图像分类的深度神经网络(Deep neural network, DNN)的一般结构。近年来的研究重点是深入和广泛的网络架构,以达到更高的准确率和更低的误分类率。本文对卷积层、池化层和全连接层这三种神经层的基本操作进行了研究和探讨。为此,本文提出了一种新的卷积深度前馈网络(C-DFN)框架。C-DFN在MNIST数据集、INRIA行人数据集和Daimler行人数据集上的表现明显优于深度前馈网络(DFN)、深度信念网络(DBN)和卷积深度信念网络(C-DBN)。卷积层作为可训练的特征提取器,显著提高了网络性能。此外,它减少了DFN中14%的可训练参数。在C-DFN中使用PReLU等可训练激活函数,实现了三个基准数据集的平均误分类率为9.22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional and Fully Connected Layer in DFN
Deep feedforward network (DFN) is the general structure of many well-known deep neural networks (DNN) for image classification. The recent research emphasizes on going deeper and wider network architecture to achieve higher accuracy and lower misclassification rate. This paper provides a study and investigation on stacking three basic operation of neural layers, i.e. convolutional layer, pooling layer and fully connected layer. As a result, a new framework of convolutional deep feedforward network (C-DFN) is proposed in this paper. C-DFN performed significantly better than deep feedforward network (DFN), deep belief network (DBN), and convolutional deep belief network (C-DBN) in MNIST dataset, INRIA pedestrian dataset and Daimler pedestrian dataset. The convolutional layer acts as a trainable feature extractor improving the network performance significantly. Moreover, it reduced 14% of the trainable parameters in DFN. With the use of trainable activation function such as PReLU in the C-DFN, it achieves an average misclassification rate of 9.22% of the three benchmark datasets.
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来源期刊
Journal of Information Science and Engineering
Journal of Information Science and Engineering 工程技术-计算机:信息系统
CiteScore
2.00
自引率
0.00%
发文量
4
审稿时长
8 months
期刊介绍: The Journal of Information Science and Engineering is dedicated to the dissemination of information on computer science, computer engineering, and computer systems. This journal encourages articles on original research in the areas of computer hardware, software, man-machine interface, theory and applications. tutorial papers in the above-mentioned areas, and state-of-the-art papers on various aspects of computer systems and applications.
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