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Gray-level image enhancement using differential evolution optimization algorithm

机译:使用差分进化优化算法的灰度图像增强

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Differential Evolution (DE) algorithm represent an adaptive search process for solving engineering and machine learning optimization problems. This paper presents an attempt to demonstrate its adaptability and effectiveness for searching global optimal solutions to enhance the contrast and detail in a gray scale image. In this paper contrast enhancement of an image is performed by gray level modification using parameterized intensity transformation function that is considered as an objective function. The task of DE is to adapt the parameters of the transformation function by maximizing the objective fitness criterion. Experimental results are compared with other enhancement techniques, viz. histogram equalization, contrast stretching and particle swarm optimization (PSO) based image enhancement techniques.
机译:差分演进(DE)算法代表了解决工程和机器学习优化问题的自适应搜索过程。本文提出了一种试图展示其适应性和有效性,用于搜索全局最佳解决方案,以增强灰度图像中的对比和细节。在本文中,使用被认为是目标函数的参数化强度变换函数,通过灰度级修改来执行图像的对比度。 DE的任务是通过最大化目标健身标准来调整变换功能的参数。将实验结果与其他增强技术进行比较。直方图均衡,对比度拉伸和粒子群优化(PSO)的图像增强技术。

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