利用黑洞算法增强图像灰度

Saber Yaghoobi, Saeed Hemayat, H. Mojallali
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引用次数: 18

摘要

图像增强方法是最重要的图像处理技术之一。本文将图像增强视为一个优化问题,并采用一种新的启发式优化算法——黑洞算法来求解。图像增强是一个具有特定约束条件的非线性优化问题,增强过程将通过增强每个像素的内容来完成。为了得到最佳的结果,本文采用BH来寻找图像传递函数的最优参数。这里使用BH是因为它简单,易于实现,并且它对参数调整问题的不可战胜性。本文提出的增强算法的性能与一些著名的增强技术(如GA、PSO、HE和CS)进行了测试,得到的结果表明该算法具有鲁棒性,并且在其他同类算法中表现出优异的性能。由巨大的主导灰度值组成的不透明图像的增强可以被列为本文提出的方法优于文献中其他方法的优点之一,它将把输入图像变成具有浮雕纹理的增强图像。
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Image gray-level enhancement using Black Hole algorithm
Image enhancement methods are known among the most important image processing techniques. Here, image enhancement is considered as an optimization problem and a new heuristic optimization algorithm namely the Black Hole is used to solve it. Image enhancement is a nonlinear optimization problem with its particular constraints and the enhancement process will be done by intensifying each pixel's content. In this paper, BH is employed to find the image's optimum parameters of the transfer function in order to get the best results. BH is used here for its simplicity, ease of implementation, and also its invincibility against the parameter tuning issues. Performance of the proposed enhancement algorithm is tested against some of the well-known enhancement techniques viz. GA, PSO, HE and CS, and the obtained results indicate the robustness and also the outperformance of the proposed algorithm among its other counterparts. Enhancement in opaque images consisting of immense dominant gray values can be listed as one of the proposed method's superiority to that of the other available in literature, which will turn the input image into an enhanced image, featuring embossed textures.
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