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基于神经网络结构搜索的轻量化网络构建
引用本文:姚潇,史叶伟,霍冠英,徐宁.基于神经网络结构搜索的轻量化网络构建[J].模式识别与人工智能,2021,34(11):1038-1048.
作者姓名:姚潇  史叶伟  霍冠英  徐宁
作者单位:1.河海大学 物联网工程学院 常州 213022
基金项目:国家自然科学基金项目(No.61501170、41876097)、中央高校基本科研基金项目(No.B20020205)、江苏省重点研究开发项目(No.BK20192004、BE2018004-04)、东南大学生物电子学国家重点实验室开放研究基金项目(No.2019005)资助
摘    要:轻量化网络可解决深度神经网络参数较多、计算量较高、难以部署在计算能力有限的边缘设备上等问题.针对轻量化网络中常用的分组卷积的分组结构问题,文中提出基于神经网络结构搜索的轻量化网络.将不同分组的卷积单元作为搜索空间,使用神经网络结构搜索,得到网络的分组结构和整体架构.同时为了兼顾准确率与计算量,提出循环退火搜索策略,用于解决神经网络结构搜索的多目标优化问题.在数据集上的实验表明,文中网络识别准确率较高,时间复杂度和空间复杂度较低.

关 键 词:轻量化网络  模型压缩  分组卷积  神经网络结构搜索  多目标优化  
收稿时间:2021-01-07

Lightweight Model Construction Based on Neural Architecture Search
YAO Xiao,SHI Yewei,HUO Guanying,XU Ning.Lightweight Model Construction Based on Neural Architecture Search[J].Pattern Recognition and Artificial Intelligence,2021,34(11):1038-1048.
Authors:YAO Xiao  SHI Yewei  HUO Guanying  XU Ning
Affiliation:1. College of Internet of Things Engineering, Hohai University, Changzhou 213022
Abstract:The traditional deep neural network cannot be deployed on the edge devices with limited computing capacity due to numerous parameters and high computation. In this paper, a lightweight network based on neural architecture search is specially designed to solve this problem. Convolution units of different groups are regarded as search space, and neural architecture search is utilized to obtain both the group structure and the overall architecture of the network. In the meanwhile, a cycle annealing search strategy is put forward to solve the multi-objective optimization problem of neural architecture search with the consideration of the accuracy and the computation cost of the model. Experiments on datasets show that the proposed network model achieves a better performance than the state-of-the-art methods.
Keywords:Lightweight Network  Model Compression  Group Convolution  Neural Architecture Search  Multi-objective Optimization  
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