基本信息来源于合作网站,原文需代理用户跳转至来源网站获取       
摘要:
An important issue for deep learning models is the acquisition of training of data.Without abundant data from a real production environment for training,deep learning models would not be as widely used as they are today.However,the cost of obtaining abundant real-world environment is high,especially for underwater environments.It is more straightforward to simulate data that is closed to that from real environment.In this paper,a simple and easy symmetric learning data augmentation model(SLDAM)is proposed for underwater target radiate-noise data expansion and generation.The SLDAM,taking the optimal classifier of an initial dataset as the discriminator,makes use of the structure of the classifier to construct a symmetric generator based on antagonistic generation.It generates data similar to the initial dataset that can be used to supplement training data sets.This model has taken into consideration feature loss and sample loss function in model training,and is able to reduce the dependence of the generation and expansion on the feature set.We verified that the SLDAM is able to data expansion with low calculation complexity.Our results showed that the SLDAM is able to generate new data without compromising data recognition accuracy,for practical application in a production environment.
推荐文章
基于语义的Data Cube数字水印技术
数字水印
语义
数据立方体
版权
Data Transfer Object模式探讨
Data Transfer Object 三层应用 DataSet
Statistics matters in interpretations of non-traditional stable isotopic data
Isotopic data processing
Error propagation
Significant digits
Difference between means with uncertainties
内容分析
关键词云
关键词热度
相关文献总数  
(/次)
(/年)
文献信息
篇名 Symmetric Learning Data Augmentation Model for Underwater Target Noise Data Expansion
来源期刊 计算机、材料和连续体(英文) 学科 经济
关键词 DATA augmentation SYMMETRIC learning DATA EXPANSION UNDERWATER TARGET noise DATA
年,卷(期) 2018,(12) 所属期刊栏目
研究方向 页码范围 521-532
页数 12页 分类号 F42
字数 语种
DOI
五维指标
传播情况
(/次)
(/年)
引文网络
引文网络
二级参考文献  (0)
共引文献  (0)
参考文献  (0)
节点文献
引证文献  (0)
同被引文献  (0)
二级引证文献  (0)
2018(0)
  • 参考文献(0)
  • 二级参考文献(0)
  • 引证文献(0)
  • 二级引证文献(0)
研究主题发展历程
节点文献
DATA
augmentation
SYMMETRIC
learning
DATA
EXPANSION
UNDERWATER
TARGET
noise
DATA
研究起点
研究来源
研究分支
研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
计算机、材料和连续体(英文)
月刊
1546-2218
江苏省南京市浦口区东大路2号东大科技园A
出版文献量(篇)
346
总下载数(次)
4
总被引数(次)
0
论文1v1指导