Small Sample Image Recognition Based on CNN and RBFNN,ERICDATA高等教育知識庫
高等教育出版
熱門: 王善边  崔雪娟  黃光男  朱丽彬  王美玲  黃乃熒  
高等教育出版
首頁 臺灣期刊   學校系所   學協會   民間出版   大陸/海外期刊   政府機關   學校系所   學協會   民間出版   DOI註冊服務
閱讀全文
篇名
Small Sample Image Recognition Based on CNN and RBFNN
並列篇名
Small Sample Image Recognition Based on CNN and RBFNN
作者 Biyuan YaoHui ZhouJianhua YinGuiqing LiChengcai Lv
英文摘要
Identification of dangerous goods based on images plays a key role in the security inspection of various situations such as airports, subways, public places etc. This paper discusses the issue in a from-simple-tocomplex manner. Firstly, we classify different kinds of knives given an image including a single object without complex background in the framework of TensorFlow. Then, according to the color and shape features of a single image, where Fourier transform and Roberts operator is used to judge of the complex scene which doesn’t contain knives from an image with natural background. Finally, convolution neural network (CNN) and radial basis function neural network (RBFNN) are used to construct identification models for images of objects in six categories. The obtained accuracy of the true and predicted values of the CNN and RBFNN are 66.67% for training on CNN and 76.67% on RBFNN, for testing 50% on CNN and 44.44% on RBFNN respectively. The results showed that the constructed of identification model is able to perform recognition for small-scale image database and reduce the false alarm rate. Furthermore, our method is robust in dealing with the small sample, with high classification accuracy and low cost. The models have few layers and nodes.
起訖頁 881-889
關鍵詞 Image recognitionTensorFlowFourier transformRoberts operatorCNNRBFNN
刊名 網際網路技術學刊  
期數 202005 (21:3期)
出版單位 台灣學術網路管理委員會
DOI 10.3966/160792642020052103025   複製DOI
QR Code
該期刊
上一篇
Anomaly Detection in Crowded Scenes Based on Group Motion Features
該期刊
下一篇
Channel Modeling and Characteristics for High Altitude Platform Stations Communication System

高等教育知識庫  閱讀計畫  教育研究月刊  新書優惠  

教師服務
合作出版
期刊徵稿
聯絡高教
高教FB
讀者服務
圖書目錄
教育期刊
訂購服務
活動訊息
數位服務
高等教育知識庫
國際資料庫收錄
投審稿系統
DOI註冊
線上購買
高點網路書店 
元照網路書店
博客來網路書店
教育資源
教育網站
國際教育網站
關於高教
高教簡介
出版授權
合作單位
知識達 知識達 知識達 知識達 知識達 知識達
版權所有‧轉載必究 Copyright2011 高等教育文化事業股份有限公司  All Rights Reserved
服務信箱:edubook@edubook.com.tw 台北市館前路 26 號 6 樓 Tel:+886-2-23885899 Fax:+886-2-23892500