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A 'Tuned' LEMask Learnt Approach Based on Gravitational Search Algorithm

机译:一种基于引力搜索算法的“调谐”Lemask学习方法

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摘要

Texture image classification is an important topic in many applications in machine vision and image analysis. Texture feature extracted from the original texture image by using "Tuned" mask is one of the simplest and most effective methods. However, hill climbing based training methods could not acquire the satisfying mask at a time; on the other hand, some commonly used evolutionary algorithms like genetic algorithm (GA) and particle swarm optimization (PSO) easily fall into the local optimum. A novel approach for texture image classification exemplified with recognition of residential area is detailed in the paper. In the proposed approach, " Tuned" mask is viewed as a constrained optimization problem and the optimal " Tuned" mask is acquired by maximizing the texture energy via a newly proposed gravitational search algorithm (GSA). The optimal " Tuned" mask is achieved through the convergence of GSA. The proposed approach has been, respectively, tested on some public texture and remote sensing images. The results are then compared with that of GA, PSO, honey-bee mating optimization (HBMO), and artificial immune algorithm (AIA). Moreover, feature extracted by Gabor wavelet is also utilized to make a further comparison. Experimental results show that the proposed method is robust and adaptive and exhibits better performance than other methods involved in the paper in terms of fitness value and classification accuracy.
机译:纹理图像分类是机器视觉和图像分析中的许多应用中的一个重要主题。通过使用“调谐”掩码从原始纹理图像中提取的纹理特征是最简单和最有效的方法之一。然而,基于山的攀爬训练方法一次无法获得满足的面罩;另一方面,一些常用的进化算法等遗传算法(GA)和粒子群优化(PSO)等易于落入局部最佳状态。本文详述了识别住宅区的识别纹理图像分类的新方法。在所提出的方法中,将“调谐”掩模视为受约束的优化问题,通过通过新提出的重力搜索算法(GSA)最大化纹理能量来获取最佳的“调谐”掩模。通过GSA的融合来实现最佳的“调谐”掩模。拟议的方法分别在一些公共纹理和遥感图像上进行了测试。然后将结果与Ga,PSO,蜂蜜蜜蜂交配优化(HBMO)和人工免疫算法(AIA)进行比较。此外,通过Gabor小波提取的特征也用于进一步比较。实验结果表明,该方法是坚固且适应性的,并且表现出比本文涉及的其他方法在适应性值和分类准确性方面的性能。

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