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Transfer learning for hostel image classification

机译:转让旅馆的影像分类学习

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Purpose Because of the fast-growing digital image collections on online platforms and the transfer learning ability of deep learning technology, image classification could be improved and implemented for the hostel domain, which has complex clusters of image contents. This paper aims to test the potential of 11 pretrained convolutional neural network (CNN) with transfer learning for hostel image classification on the first hostel image database to advance the knowledge and fill the gap academically, as well as to suggest an alternative solution in optimal image classification with less labour cost and human errors to those who manage hostel image collections. Design/methodology/approach The hostel image database is first created with data pre-processing steps, data selection and data augmentation. Then, the systematic and comprehensive investigation is divided into seven experiments to test 11 pretrained CNNs which transfer learning was applied and parameters were fine-tuned to match this newly created hostel image dataset. All experiments were conducted in Google Colaboratory environment using PyTorch. Findings The 7,350 hostel image database is created and labelled into seven classes. Furthermore, its experiment results highlight that DenseNet 121 and DenseNet 201 have the greatest potential for hostel image classification as they outperform other CNNs in terms of accuracy and training time. Originality/value The fact that there is no existing academic work dedicating to test pretrained CNNs with transfer learning for hostel image classification and no existing hostel image-only database have made this paper a novel contribution.
机译:目的由于快速增长的数字图像收藏在线平台和转移深度学习技术的学习能力,分类可以改善和形象实现旅馆域,复杂的图像内容。旨在测试11 pretrained的潜力卷积神经网络(CNN)与转移旅馆的影像分类的学习第一招待所图像数据库来推进知识和填补这一缺口学术建议的替代解决方案最优图像分类用更少的劳动力成本和人类错误的人管理宿舍的形象集合。旅馆形象首次创建数据库和数据预处理步骤,数据选择和数据增加。全面调查分为7个实验测试11 pretrained cnn转移学习应用和参数调整以匹配这个新创建的招待所图像数据集。谷歌使用PyTorch Colaboratory环境。发现7350宿舍图像数据库创建并标记为七个类。此外,其实验结果突出DenseNet 121和DenseNet 201潜力最大的旅馆的形象分类优于其他cnn准确性和训练时间。创意/值不存在的事实现有的学术工作致力于测试pretrained cnn与转移学习招待所图像分类和现有的宿舍仅数据库使本文的小说的贡献。

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