基于迁移学习的Pytorch艺术分类

G. Masilamani, R. Valli
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引用次数: 2

摘要

近年来,深度学习在人工智能领域取得了更大的发展,目前在全球范围内得到了应用。这有助于提高系统的准确性。深度学习算法使图像分类更加可行,使我们能够分析大型数据集。目前,深度卷积神经网络被广泛应用于图像分类中。本文使用Kaggle的Best artwork of All Time数据集中的VGG16, ResNet18, ResNet50, GoogleNet, MobileNet, AlexNet进行图像分类,并选择最佳模型进行数据集的训练。该数据集是8355张高分辨率肖像的集合,以RGB图像的形式呈现。经过实验发现,在所有时间的最佳艺术品数据中,ResNet50在所有其他训练的深度网络中获得了87.15%的准确率和0.0015%的损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Art Classification with Pytorch Using Transfer Learning
Deep Learning has advanced to a greater level in the field of Artificial Intelligence in recent years, and it is currently employed globally. This aids the system in improving its accuracy. Deep Learning algorithms have made image classification considerably more viable, allowing us to analyse large datasets. Deep Convolutional Neural Networks are used in the majority of image classification nowadays. In this paper, Image Classification is performed using the VGG16, ResNet18, ResNet50, GoogleNet, MobileNet, AlexNet in Best Artworks of All Time Dataset which is taken from the Kaggle and the best model for training the dataset is choosen. This Dataset is the collection of the 8355 high resolution portraits which is in form of the RGB Images. After experimentation it is found that, in the Best Artworks of all Time data the ResNet50 achieved better accuracy of 87.15% and loss of 0.0015% among all other trained Deep Networks.
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