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Deep Learning Architectures for Hard Character Classification

机译:用于硬字符分类的深度学习架构

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Recent research indicates that deep learning has achieved noticeably promising results in a wide range of areas such as computer vision, speech recognition and natural language processing. This paper offers an empirical study on the use of deep learning techniques for hard characters recognition on the notMNIST dataset. The MNIST dataset has been widely used for training and testing in the field of machine learning such as for the performance comparison of different deep learning algorithms. However, similar performance evaluation using the notMNIST dataset has not been reported. This dataset is harder and much less clean than the MNIST dataset. In this paper, we constructed several experiments to evaluate various deep learning architectures and proposed a multi-layer convolutional neural network for large-scale hard character classification on the notMNIST dataset. The result shows that our method can achieve 98% accuracy of classification. Comparisons were also performed against conventional fine tuning models such as logistic classifier and shallow neural network to demonstrate that well-constructed deep neural networks can significantly improve the accuracy of hard character classification on the notMNIST dataset.
机译:最近的研究表明,深度学习在诸如计算机视觉,语音识别和自然语言处理等广泛领域中均取得了令人瞩目的成果。本文提供了关于使用深度学习技术在notMNIST数据集上进行硬字符识别的实证研究。 MNIST数据集已广泛用于机器学习领域的培训和测试,例如用于不同深度学习算法的性能比较。但是,尚未报告使用notMNIST数据集进行类似的性能评估。与MNIST数据集相比,此数据集更难且更不干净。在本文中,我们构建了一些实验来评估各种深度学习架构,并在notMNIST数据集上提出了用于大规模硬字符分类的多层卷积神经网络。结果表明,该方法可以达到98%的分类精度。还与传统的微调模型(例如逻辑分类器和浅层神经网络)进行了比较,以证明结构良好的深层神经网络可以显着提高notMNIST数据集上硬字符分类的准确性。

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