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Applying BinaryWeights in Neural Networks for Sequential Text Recognition

机译:在神经网络中应用BinaryWeight进行顺序文本识别

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With the development of deep learning, researchers have achieved lots of breakthroughs in many classical problems. Unfortunately, these progresses are demanding on the hardwares, especially GPU, causing a huge energy consumption. Therefore, how to implement these neural networks with lower requirements of hardwares is holding more and more attention. In this paper, two aspects of the work were done. Firstly, we build a deep learning framework that supports training and prediction with binarized neural networks. This framework include binarized layers, e.g. Convolution (Conv) and LSTM layers. It is based on our analysis of how to implement a binarized layer and train BianryWeights with it. Secondly, we construct a network with binarized layers which are implemented in our framework to achieve good performance on sequential text recognition. We also modify the network architecture in order to obtain the experimental results with little loss on accuracy.
机译:随着深度学习的发展,研究人员在许多经典问题上取得了许多突破。不幸的是,这些进步对硬件(尤其是GPU)的要求很高,从而导致巨大的能耗。因此,如何以较低的硬件需求实现这些神经网络越来越受到关注。本文完成了两个方面的工作。首先,我们建立了一个深度学习框架,该框架支持使用二值神经网络进行训练和预测。该框架包括二值化层,例如卷积(Conv)和LSTM层。它基于我们对如何实现二值化层并使用它训练BianryWeights的分析。其次,我们构建了一个具有二值化层的网络,这些层在我们的框架中实现,可以在顺序文本识别中获得良好的性能。我们还修改了网络架构,以在不损失准确性的情况下获得实验结果。

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