Title of article
Optimizing support vector machine learning for semi-arid vegetation mapping by using clustering analysis
Author/Authors
Su، نويسنده , , Lihong، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
7
From page
407
To page
413
Abstract
In remote sensing communities, support vector machine (SVM) learning has recently received increasing attention. SVM learning usually requires large memory and enormous amounts of computation time on large training sets. According to SVM algorithms, the SVM classification decision function is fully determined by support vectors, which compose a subset of the training sets. In this regard, a solution to optimize SVM learning is to efficiently reduce training sets. In this paper, a data reduction method based on agglomerative hierarchical clustering is proposed to obtain smaller training sets for SVM learning. Using a multiple angle remote sensing dataset of a semi-arid region, the effectiveness of the proposed method is evaluated by classification experiments with a series of reduced training sets. The experiments show that there is no loss of SVM accuracy when the original training set is reduced to 34% using the proposed approach. Maximum likelihood classification (MLC) also is applied on the reduced training sets. The results show that MLC can also maintain the classification accuracy. This implies that the most informative data instances can be retained by this approach.
Keywords
Training , Vegetation , DATA MINING , Classification , Land cover
Journal title
ISPRS Journal of Photogrammetry and Remote Sensing
Serial Year
2009
Journal title
ISPRS Journal of Photogrammetry and Remote Sensing
Record number
2228693
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