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Implementation of CNN in the view of mini-batch DNN training for efficient second order optimization

효과적인 2차 최적화 적용을 위한 Minibatch 단위 DNN 훈련 관점에서의 CNN 구현

  • 송화전 (한국전자통신연구원) ;
  • 정호영 (한국전자통신연구원 음성처리연구실) ;
  • 박전규 (한국전자통신연구원 음성처리연구실)
  • Received : 2016.04.28
  • Accepted : 2016.06.22
  • Published : 2016.06.30

Abstract

This paper describes some implementation schemes of CNN in view of mini-batch DNN training for efficient second order optimization. This uses same procedure updating parameters of DNN to train parameters of CNN by simply arranging an input image as a sequence of local patches, which is actually equivalent with mini-batch DNN training. Through this conversion, second order optimization providing higher performance can be simply conducted to train the parameters of CNN. In both results of image recognition on MNIST DB and syllable automatic speech recognition, our proposed scheme for CNN implementation shows better performance than one based on DNN.

Keywords

References

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