2019年度 人工知能学会全国大会(第33回)

2019年度 人工知能学会全国大会(第33回)

2019年6月4日〜6月7日朱鷺メッセ 新潟コンベンションセンター
人工知能学会
2019年度 人工知能学会全国大会(第33回)

2019年度 人工知能学会全国大会(第33回)

2019年6月4日〜6月7日朱鷺メッセ 新潟コンベンションセンター

[2H4-E-2-05]Reducing the Number of Multiplications in Convolutional Recurrent Neural Networks (ConvRNNs)

〇Daria Vazhenina1, Atsunori Kanemura1(1. Leapmind Inc.)
Convolutional variants of recurrent neural networks, ConvRNNs, are widely used for spatio-temporal modeling. Although ConvRNNs are suited to model two-dimensional sequences, the introduction of convolution operation brings additional parameters and increases the computational complexity. The computation load can be obstacles in putting ConvRNNs in operation in real-world applications. We propose to reduce the number of parameters and multiplications by substituting some convolutiona operations with the Hadamard product. We evaluate our proposal using the task of next video frame prediction and the Moving MNIST dataset. The proposed method requires 38% less multiplications and 21% less parameters compared to the fully convolutional counterpart. In price of the reduced computational complexity, the performance measured by for structural similarity index measure (SSIM) decreased about 1.5%. ConvRNNs with reduced computations can be used in more various situations likein web apps or embedded systems.