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Cascading Training for Relaxation CNN on Handwritten Character Recognition

机译:放松CNN手写字符识别的级联训练

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With the development of deep learning, many difficult recognition problems can be solved by deep learning models. For handwritten character recognition, the CNN is used the most. In order to improve the performance of CNN, many new models have been proposed and in which the relaxation CNN [35] is widely used. The relaxation CNN has more complicated structure than CNN while the recognition time is the same with which. However, the training of relaxation CNN needs much more time than CNN. In this paper, we propose the cascading training for relaxation CNN. Our method can train a relaxation CNN of better performance while using almost the same training time with normal CNN. The experimental results proved that the relaxation CNN trained by cascading training is able to achieve the state-of-the-art performance on handwritten Chinese character recognition.
机译:随着深度学习的发展,深度学习模型可以解决许多困难的识别问题。对于手写字符识别,最常使用CNN。为了提高CNN的性能,已经提出了许多新模型,其中松弛CNN [35]被广泛使用。松弛CNN的结构比CNN复杂,而识别时间与此相同。但是,放松CNN的训练比CNN需要更多的时间。在本文中,我们提出了放松CNN的级联训练。我们的方法可以训练出性能更好的放松CNN,同时使用与正常CNN几乎相同的训练时间。实验结果证明,通过级联训练训练的松弛CNN可以达到手写体汉字识别的最新性能。

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