cnn图像分类中改进的VGG结构

Nurzarinah Zakaria, Yana Mazwin Mohmad Hassim
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引用次数: 1

摘要

除了计算机视觉,深度学习还将这一概念带入了机器学习的新时代。用于分类分析的深度学习方法之一是卷积神经网络(cnn),这是一种人工神经网络模型,通常是计算机视觉中最流行的方法。近几十年来,人们提出了许多图像分类方法。为了获得更高的准确率,大多数研究都集中在对cnn架构的深化和扩大上,如VGG网络。然而,另一方面,深度和复杂的体系结构可能导致超长的执行时间。本研究的主要目的是利用改进的VGG架构对图像进行分类,以减少执行时间,提高分类性能。利用Kaggle提供的6个不同的数据集,对所提出的架构与另外3个现有架构进行了对比实验和训练。结果表明,所提体系结构的执行时间和分类精度均优于其他三种现有体系结构。因此,所提出的体系结构表明,缩小VGG体系结构可以提高执行时间和分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved VGG Architecture in CNNs for Image Classification
Apart from computer vision, deep learning has brought the concept to a new era of machine learning. One of the deep learning approaches for classification analysis is Convolutional Neural Networks (CNNs), a model of artificial neural network that has often been the most popular approach in computer vision. In recent decades, many approaches for image classification have been proposed. To obtain high accuracy, most studies focused on deepening and enlarging the CNNs architecture such as the VGG network. However, deep and complex architecture, on the other hand, can result in extraordinarily long execution time. This study primarily aims to classify images using the improved VGG architecture to minimize the execution time and enhance the classification performance. The comparative experiments of the proposed architecture with another three existing architectures have been made and trained with six different datasets from Kaggle. As a result, the execution time and the classification accuracy of the proposed architecture is better than the other three existing architecture. Hence, the proposed architecture indicates that the execution time and the classification performance can be improved by downsized the VGG architecture.
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