This paper proposes an OTSU based differential evolution method for satellite image segmentation and compares it with four other methods such as Modified Artificial Bee Colony Optimizer (MABC), Artificial Bee Colony (ABC), Genetic Algorithm (GA), and Particle Swarm Optimization (PSO) using the objective function proposed by Otsu for optimal multilevel thresholding. The experiments conducted and their results illustrate that our proposed DE and OTSU algorithm segmentation can effectively and precisely segment the input image, close to results obtained by the other methods. In the proposed DE and OTSU algorithm, instead of passing the fitness function variables, the entire image is passed as an input to the DE algorithm after obtaining the threshold values for the input number of levels in the OTSU algorithm. The image segmentation results are obtained after learning about the image instead of learning about the fitness variables. In comparison to other segmentation methods examined, the proposed DE and OTSU algorithm yields promising results with minimized computational time compared to some algorithms.
翻译:本文提出基于OTSU的卫星图像分化差异演化方法,并将之与其他四种方法进行比较,如变形人工蜂巢优化仪(MABC)、人工蜂巢优化仪(ABC)、遗传阿尔戈蒂姆(GA)和粒子蒸汽优化仪(PSO),使用OTSU提出的最佳多级阈值客观功能。所进行的实验及其结果表明,我们提议的DE和OTSU算法分解法能够有效而准确地分割输入图像,接近其他方法获得的结果。在拟议的DE和OTSU算法中,整个图像在获得OTSU算法投入量的临界值之后,作为DE算法的一种输入,在了解图像分解结果而不是学习健康变量之后获得。与所研究的其他分解方法相比,拟议的DE和OTSU算法在最小的计算时间与某些算法相比,产生希望的结果。