A GPU-based convolutional neural network approach for image classification

Emine Cengil, A. Cinar, Zafer Güler
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引用次数: 21

Abstract

Deep learning obtains successful results in solving many machine learning problems. In this study, image classification process is performed by using Convolutional Neural Network (CNN) which is the most used architecture of deep learning. Image classification is used in a lot of basic field like medicine, education and security. Conditions that correct classification has vital importance may be especially in medicine field. Therefore, improved methods are needed in this issue. Although several algorithms for image classification have been developed over the years, they have not been used with the discovery of Convolutional Neural Networks. Convolutional Neural Networks provide better results than existing methods in the literature due to advantages such as processing by extracting hidden features, allowing parallel processing thanks to parallel structure, and real time operation. Furthermore, we use Convolutional Neural Networks in the proposed method. In this study, the image classification process is performed by using like a LeNet network model. The caffe library, which is often used for deep learning, is utilized. Our method is trained and tested with images of cats and dogs taken from the kaggle dataset. 10.000 tagged data is used for training and 5.000 unlabeled data is used for testing. Owing to Convolutional Neural Networks allow parallel processing, GPU technology has been used. In our method is used GPU technology and classification is evaluated with acceptable accuracy rate and speed performance.
基于gpu的卷积神经网络图像分类方法
深度学习在解决许多机器学习问题上取得了成功的结果。在本研究中,图像分类过程使用卷积神经网络(CNN),这是深度学习中最常用的架构。图像分类在医学、教育、安全等诸多基础领域都有广泛的应用。特别是在医学领域,正确的分类具有至关重要的意义。因此,在这个问题上需要改进的方法。尽管多年来已经开发了几种图像分类算法,但它们并没有与卷积神经网络的发现一起使用。卷积神经网络具有提取隐藏特征进行处理、并行结构允许并行处理、实时性等优点,比现有文献中的方法提供了更好的结果。此外,我们在提出的方法中使用了卷积神经网络。在本研究中,图像分类过程是使用像LeNet网络模型来完成的。利用了深度学习常用的caffe库。我们的方法是用kaggle数据集中的猫和狗的图像进行训练和测试的。10000个标记数据用于训练,5000个未标记数据用于测试。由于卷积神经网络允许并行处理,GPU技术已被使用。在我们的方法中使用了GPU技术,并以可接受的准确率和速度性能对分类进行了评估。
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