PAPER SENDING SUBSCRIPTION

  • googleplus
  • facebook
  • twitter
  • linkedin
  • linkedin

DYNA JOURNAL ENGINEERING DYNA JOURNAL ENGINEERING

  • Skip to the menu
  • Skip to the content
  • DYNA Publishing
    • DYNA
    • DYNA Energy & Sustainability
    • DYNA Management
    • DYNA New Technologies
  • Journal
    • The Journal and its organs
      • Management Board and General Meeting of Shareholders
      • Editors Board
      • Scientific Board
    • History
    • Mission - Vision and Values
    • Annual survey result
    • Frequent asked questions
    • Dissemination and Indexing
    • It is said about DYNA...
    • Collaborate with DYNA
    • Links of interest for engineering
      • FRIENDLY organizations
      • Contributing organizations
      • Engineering Associations
      • Others engineering journals
      • Other interesting links
  • Authors and Referees
    • Guidelines, rules and forms
    • Dissemination and indexing
    • How researchers can collaborate
  • Papers
    • Search
    • Volumes and issues
    • Most downloaded last year
    • Submission of papers
    • Next issue contents
    • Monographic reports
  • News
    • News
    • Newsletters
    • Book Review
    • Software review
  • Blogs and Community
    • Forums
    • How collaborate
  • Subscribing
    • Sign up
  • Advertising
    • Target audience & ad formats
    • Advertising prices
    • Contents for next issue
    • Newsletter
  • Contact
    • How to contact
  • Search
    • In this Journal
    • Search in DYNA journals

Return to the menu

  • Homepage
  • Papers
  • Search

Search

×

Vote:

Results: 

0 points

 0  Votes

DETECTION OF KIWIFRUIT DRY MATTER CONTENT BASED ON HYPERSPECTRAL TECHNOLOGY USING UNINFORMED VARIABLE ELIMINATION COUPLED WITH SUCCESSIVE PROJECTION ALGORITHM

NOVEMBER 2020   -  Volume: 95 -  Pages: 654-660

DOI:

https://doi.org/10.6036/9837

Authors:

LIJIA XU - LINA ZHENG - PENG HUANG - HENG CHEN - ZHILIANG KANG

Disciplines:

  • Agricultural engineering (OTRAS )

Downloads:   130

How to cite this paper:  
Download pdf

Download pdf

Received Date :   9 April 2020

Reviewing Date :   9 April 2020

Accepted Date :   2 September 2020


Key words:
Dry matter content, Uninformed variable elimination, UVE, Successive projection algorithm, SPA, Least squares support vector machine, LSSVM
Article type:
ARTICULO DE INVESTIGACION / RESEARCH ARTICLE
Section:
RESEARCH ARTICLES

The internal parameters of kiwifruit are mostly detected using traditional destructive physical–chemical methods, which are not only labor and time consuming but also inconvenient in operation. The hyperspectral imaging technique is now considered a new non-destructive method for detecting the quality parameters of kiwifruits. However, most studies focused on detecting the soluble solid content, hardness, and ripeness of this fruit. Thus, the detection precision of this imaging technique needs to be improved. Moreover, few of these techniques are involved in the detection of the dry matter content. A non-destructive detection method based on the hyperspectral imaging technique is proposed in this study to detect the dry matter content of kiwifruit online rapidly and precisely. First, the hyperspectral images of kiwifruit were analyzed, the interested regions therein were extracted, and denoising was preprocessed using the multiplicative scatter correction. Second, the redundancy of the 217 pieces of full-band spectral information was researched, and 66 characteristic spectral bands were initially screened out through uninformed variable elimination (UVE). The collinearity among these bands was eliminated using successive projection algorithm (SPA), and five characteristic spectral bands were extracted. Finally, the dry matter content of the kiwifruit was detected by taking least squares support vector (LSSVM) as the detector, by employing particle swarm optimization (PSO) to optimize LSSVM’s parameters, and by entering the five bands into the LSSVM later. Test results show that: (1) the redundancy and the collinearity of the full spectral bands can be eliminated effectively by combining SPA with UVE so that the extracted low-dimensional characteristic spectral bands can reflect the dry matter content of kiwifruit better. (2) The detection indicators of UVE+SPA+LSSVM to the training set is that the coefficient of correlation (R) = 0.91, root-mean-square error (RMSE) = 0.28, and the detection indicators to the prediction set is that R = 0.89, RMSE = 0.31, indicating that the detection precision is higher than the other methods. This study shows that the non-destructive detection method proposed in this paper can detect the dry matter content of kiwifruit rapidly and efficiently. This method serves as a theoretical basis for the industrialized classification of kiwifruit that is based on the internal parameters.

Keywords: Dry matter content, Uninformed variable elimination (UVE), Successive projection algorithm (SPA), Least squares support vector machine (LSSVM)

Share:  

  • Twittear
  • facebook
  • google+
  • linkedin
  • delicious
  • yahoo
  • myspace
  • meneame
  

Search

banner crosscheck

  •  
  • Twitter
  • Twitter
  •  
  • Facebook
  • Facebook
  •  
Tweets por el @revistadyna.
Loading…

Anunciarse en DYNA 

© Engineering Journal Dyna 2006 - Publicaciones Dyna, S.L

Official Science and Technology Body of the Federation of Industrial Engineers' Associations

Address: Unit 1804 South Bank Tower, 55 Upper Ground, London UK, SE1 9EY

Email: office@revistadyna.com

  • Menu
  • DYNA Publishing
    • DYNA Publishing
    • DYNA
    • DYNA Energy & Sustainability
    • DYNA Management
    • DYNA New Technologies
  • Journal
    • The Journal and its organs
      • The Journal and its organs
      • Management Board and General Meeting of Shareholders
      • Editors Board
      • Scientific Board
    • History
    • Mission - Vision and Values
    • Annual survey result
    • Frequent asked questions
    • Dissemination and Indexing
    • It is said about DYNA...
    • Collaborate with DYNA
    • Links of interest for engineering
      • Links of interest for engineering
      • FRIENDLY organizations
      • Contributing organizations
      • Engineering Associations
      • Others engineering journals
      • Other interesting links
  • Authors and Referees
    • Guidelines, rules and forms
    • Dissemination and indexing
    • How researchers can collaborate
  • Papers
    • Papers
    • Search
    • Volumes and issues
    • Most downloaded last year
    • Submission of papers
    • Next issue contents
    • Monographic reports
  • News
    • News
    • Newsletters
    • Book Review
    • Software review
  • Blogs and Community
    • Blogs and Community
    • Forums
    • How collaborate
  • Subscribing
    • Sign up
  • Advertising
    • Target audience & ad formats
    • Advertising prices
    • Contents for next issue
    • Newsletter
  • Contact
    • How to contact
  • Search
    • In this Journal
    • Search in DYNA journals

Regístrese en un paso con su email y podrá personalizar sus preferencias mediante su perfil


: *   

: *   

:

: *     

 

  

Loading Loading ...