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A Novel Fast Approach for Convolutional Networks with Small Filters Based on GPU

机译:基于GPU的带小滤波器的卷积网络快速新方法

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摘要

Recently, convolutional networks have achieved great successes in the field of computer vision. In order to improve the efficiency of convolutional networks, large amount of solutions focusing on training algorithms and parallelism strategies have been proposed. In this paper, a novel algorithm based on look-up table is proposed to speed up convolutional networks with small filters by applying GPU. By transforming multiplication operations in the convolution computation to some table-based summation operations, the overhead of convolution computation can be reduced largely. The process of creating table and looking up table is very appropriate for parallelization on GPU. Experiment results show that the proposed approaches can improve the speed of convolution computation by 20%-30%, compared with state-of-the-art existing works.
机译:最近,卷积网络在计算机视觉领域取得了巨大的成功。为了提高卷积网络的效率,已经提出了大量针对训练算法和并行策略的解决方案。提出了一种基于查询表的新算法,通过应用GPU来加速带小滤波器的卷积网络。通过将卷积计算中的乘法运算转换为一些基于表的求和运算,可以大大减少卷积计算的开销。创建表和查找表的过程非常适合在GPU上并行化。实验结果表明,与现有技术相比,该方法可以将卷积计算速度提高20%-30%。

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