Digital Library
Close Browse articles from a journal
 
<< previous    next >>
     Journal description
       All volumes of the corresponding journal
         All issues of the corresponding volume
           All articles of the corresponding issues
                                       Details for article 8 of 26 found articles
 
 
  Automated rangeland vegetation cover and density estimation using ground digital images and a spectral-contextual classifier
 
 
Title: Automated rangeland vegetation cover and density estimation using ground digital images and a spectral-contextual classifier
Author: Zhou, Q.
Robson, M.
Appeared in: International journal of remote sensing
Paging: Volume 22 (2001) nr. 17 pages 3457-3470
Year: 2001-11-20
Contents: A method to estimate vegetation cover, density and background brightness parameters in a rangeland environment from low-altitude digital images is presented. A digital still-frame camera, mounted on a 5.2 m pole, is used to acquire images of the ground. The acquired images are then processed using an unsupervised spectral-contextual classifier to extract quantitative measurements automatically. The test results show that the extracted cover measures from the fully automated procedure provide an accuracy of 0.89 to 0.99, measured in kappa, compared with 0.36 to 0.58 and 0.79 to 0.95 from k -means clustering and maximum likelihood supervised classifications respectively. For the clump density measure, the proposed method had an error level ranging from 0 to -62%-hundreds of times less than those produced from both k -means and maximum likelihood classifications. The presented method overcomes human subjectivity inherent in other commonly used ground investigation methods for estimating vegetation cover. The results provide an accurate and objective reference for the calibration of models which relate the spectral reflectance recorded by remote sensors to quantitative measures of range condition.
Publisher: Taylor & Francis
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 8 of 26 found articles
 
<< previous    next >>
 
 Koninklijke Bibliotheek - National Library of the Netherlands