Automatic Convolution Neural Network Model Compression Framework for Resource-Constrained Embedded Systems 


Vol. 47,  No. 2, pp. 136-146, Feb.  2020
10.5626/JOK.2020.47.2.136


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  Abstract

Recently, attempts have been made to directly execute various convolutional neural network applications in resource-constrained embedded systems such as IoT. However, since embedded systems have limited computational capability and memory, the size of the neural network model that can be executed is restricted and may not satisfy real-time constraints. Therefore, in this paper, we propose a framework that automatically compresses a given neural network model to satisfy memory and execution time requirements and automatically generates code that can be executed on the target embedded system. Using the proposed framework, we demonstrate that the given neural network models can be automatically optimized for two STM32 Nucleo series boards with different HW specifications for various execution time and memory requirements.


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  Cite this article

[IEEE Style]

J. Jeong, D. Lee, H. Jung, H. Yang, "Automatic Convolution Neural Network Model Compression Framework for Resource-Constrained Embedded Systems," Journal of KIISE, JOK, vol. 47, no. 2, pp. 136-146, 2020. DOI: 10.5626/JOK.2020.47.2.136.


[ACM Style]

Jonghun Jeong, Dasom Lee, Hyeonseok Jung, and Hoeseok Yang. 2020. Automatic Convolution Neural Network Model Compression Framework for Resource-Constrained Embedded Systems. Journal of KIISE, JOK, 47, 2, (2020), 136-146. DOI: 10.5626/JOK.2020.47.2.136.


[KCI Style]

정종훈, 이다솜, 정현석, 양회석, "자원제약 내장형 시스템을 위한 컨볼루션 뉴럴 네트워크 모델 자동 경량화 프레임워크," 한국정보과학회 논문지, 제47권, 제2호, 136~146쪽, 2020. DOI: 10.5626/JOK.2020.47.2.136.


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