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利用迁移学习和焦点损失卷积神经网络的石墨分类
引用本文:徐小平,余香佳,刘广钧,王峰.利用迁移学习和焦点损失卷积神经网络的石墨分类[J].计算机系统应用,2022,31(3):248-254.
作者姓名:徐小平  余香佳  刘广钧  王峰
作者单位:西安理工大学 理学院, 西安 710054,西安交通大学 数学与统计学院, 西安 710049
基金项目:国家自然科学基金(61773016); 陕西省创新能力支撑计划(2020PT-023); 陕西省自然科学基础研究计划(2018JQ1089)
摘    要:为了使得优质石墨资源得到优质优用, 提出利用迁移学习和焦点损失卷积神经网络的石墨分类识别算法.在自建的初始数据集基础上, 通过对数据集的离线扩充与在线增强, 有效扩大数据集并减低深层CNN过拟合的风险. 以VGG16、ResNet34和MobileNet V2为基础模型, 重新设计新的输出模块载入全连接层, 提高了模型...

关 键 词:石墨  图像分类  迁移学习  focal  loss  卷积神经网络
收稿时间:2021/5/7 0:00:00
修稿时间:2021/6/8 0:00:00

Graphite Classification Using Transfer Learning and Focal Loss Convolutional Neural Network
XU Xiao-Ping,YU Xiang-Ji,LIU Guang-Jun,WANG Feng.Graphite Classification Using Transfer Learning and Focal Loss Convolutional Neural Network[J].Computer Systems& Applications,2022,31(3):248-254.
Authors:XU Xiao-Ping  YU Xiang-Ji  LIU Guang-Jun  WANG Feng
Abstract:For better use of high-quality graphite resources, this paper proposed a graphite classification and recognition algorithm based on transfer learning and focal loss convolutional neural network (CNN). The offline expansion and online enhancement of the self-built initial data set can effectively expand the data set and reduce the overfitting risk of deep CNN. With VGG16, ResNet34 and MobileNet V2 as basic models, a new output module is redesigned and loaded into the full connection layer, which improves the generalization ability and robustness of the model. Combined with the focal loss function, the hyperparameters of the model are modified and trained on the graphite data set. The simulation results show that the proposed method has the accuracy improved to above 95% with faster convergence and a more stable model, which proves the feasibility and effectiveness of the proposed algorithm.
Keywords:graphite  image classification  transfer learning  focal loss  convolutional neural network (CNN)
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