月旦知識庫
 
  1. 熱門:
 
首頁 臺灣期刊   法律   公行政治   醫事相關   財經   社會學   教育   其他 大陸期刊   核心   重要期刊 DOI文章
電腦學刊 本站僅提供期刊文獻檢索。
  【月旦知識庫】是否收錄該篇全文,敬請【登入】查詢為準。
最新【購點活動】


篇名
A Survey: Object Feature Analysis Based on Non-negative Matrix Factorization
並列篇名
A Survey: Object Feature Analysis Based on Non-negative Matrix Factorization
作者 Shuang Ma (Shuang Ma)Jinhe Liu (Jinhe Liu)Liang Gao (Liang Gao)
英文摘要
Non-negative matrix decomposition (NMF) algorithm is the decomposition of all the elements in the matrix under the condition that each element should be non-negative. As a relatively effective technique for dimensionality reduction, NMF has been widely applied in the area of mathematics-physics, engineering and image feature analysis. However, there are few systematic reviews on NMF, especially the application of NMF in image feature extraction. In this paper, NMF algorithms are classified into standard NMF algorithms and improved algorithms according to the theory and application characteristics of different approaches. The basic principles, advantages and shortcomings of these NMF algorithms are systematically analyzed and compared. Firstly, the basic idea of non-negative matrix factorization is introduced, and its application in image feature extraction is illustrated by taking face image as an example. Then, the basic methods and improved algorithms of NMF are emphatically discussed in detail. The examples of local features extracted by different NMF methods are demonstrated on the basis of object feature analysis methods. Finally, the problems to be solved in the practical application of NMF are put forward for improving.
起訖頁 107-121
關鍵詞 non-negative matrix factorizationlocal featuresparse codingtwo dimensional NMF
刊名 電腦學刊  
期數 202112 (32:6期)
該期刊-上一篇 Applications of an Improved PSO in Integer Linear Programming
該期刊-下一篇 Analysis, Design and Implementation of a Non-isolated DC-DC Converter with Low Stress
 

新書閱讀



最新影音


優惠活動




讀者服務專線:+886-2-23756688 傳真:+886-2-23318496
地址:臺北市館前路28 號 7 樓 客服信箱
Copyright © 元照出版 All rights reserved. 版權所有,禁止轉貼節錄