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Wetland remote sensing classification using support vector machine optimized with co-evolutionary algorithm

机译:使用协同进化算法优化的支持向量机对湿地进行遥感分类

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In order to improve the accuracy of support vector machine (SVM) classification of wetland remote sensing images, the selection of kernel function parameters in support vector machines becomes an effective approach. In this paper, Particle Swarm Optimization and Genetic Algorithms (PSO-GA) coevolutionary algorithm are used to optimize the SVM parameters.Because of the complementarity of evolutionary features between PSO and GA, this algorithm is combined with PSO and GA to improve the convergence speed and realize the optimization of depth and breadth. Experimental results show that SVM with PSO-GA co-evolutionary algorithm can achieve high classification accuracy in finite iteration times compared with existing intelligent optimization algorithms.
机译:为了提高湿地遥感图像的支持向量机分类精度,在支持向量机中选择核函数参数成为一种有效的方法。本文采用粒子群优化与遗传算法(PSO-GA)协同进化算法对SVM参数进行优化,由于PSO和GA进化特征的互补性,该算法与PSO和GA相结合提高了收敛速度并实现深度和广度的优化。实验结果表明,与现有的智能优化算法相比,采用PSO-GA协同进化算法的SVM在有限的迭代时间内可以达到较高的分类精度。

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