Yang Ming-Der, Yang Yeh-Fen, Su Tung-Ching, Huang Kai-Siang
Department of Civil Engineering, National Chung Hsing University, Taichung 40227, Taiwan.
Department of Civil Engineering and Engineering Management, National Quemoy University, Kinmen 89250, Taiwan.
ScientificWorldJournal. 2014 Feb 18;2014:264512. doi: 10.1155/2014/264512. eCollection 2014.
Genetic algorithm (GA) is designed to search the optimal solution via weeding out the worse gene strings based on a fitness function. GA had demonstrated effectiveness in solving the problems of unsupervised image classification, one of the optimization problems in a large domain. Many indices or hybrid algorithms as a fitness function in a GA classifier are built to improve the classification accuracy. This paper proposes a new index, DBFCMI, by integrating two common indices, DBI and FCMI, in a GA classifier to improve the accuracy and robustness of classification. For the purpose of testing and verifying DBFCMI, well-known indices such as DBI, FCMI, and PASI are employed as well for comparison. A SPOT-5 satellite image in a partial watershed of Shihmen reservoir is adopted as the examined material for landuse classification. As a result, DBFCMI acquires higher overall accuracy and robustness than the rest indices in unsupervised classification.
遗传算法(GA)旨在通过基于适应度函数淘汰较差的基因串来搜索最优解。GA已在解决无监督图像分类问题(这是一个大领域中的优化问题之一)方面展现出有效性。为提高分类准确率,在GA分类器中构建了许多指标或混合算法作为适应度函数。本文通过在GA分类器中整合两个常用指标DBI和FCMI,提出了一种新指标DBFCMI,以提高分类的准确性和鲁棒性。为了测试和验证DBFCMI,还采用了诸如DBI、FCMI和PASI等知名指标进行比较。采用石门水库部分流域的SPOT - 5卫星图像作为土地利用分类的检测材料。结果表明,在无监督分类中,DBFCMI比其他指标具有更高的总体准确率和鲁棒性。