Aerial Image Denoising Using a Best-So-Far ABC-based Adaptive Filter Method

Anan Banharnsakun
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Abstract

Nowadays, digital images play an increasingly important role in helping to explain phenomena and to attract people’s attention through various types of media rather than the use of text. However, the quality of digital images may be degraded due to noise that has occurred either during their recording or their transmission via a network. Therefore, removal of image noise, which is known as “image denoising”, is one of the primary required tasks in digital image processing. Various methods in earlier studies have been developed and proposed to remove the noise found in images. For example, the use of metric filters to eliminate noise has received much attention from researchers in recent literature. However, the convergence speed when searching for the optimal filter coefficient of these proposed algorithms is quite low. Previous research in the past few years has found that biologically inspired approaches are among the more promising metaheuristic methods used to find optimal solutions. In this work, an image denoising approach based on the best-so-far (BSF) ABC algorithm combined with an adaptive filter is proposed to enhance the performance of searching for the optimal filter coefficient in the denoising process. Experimental results indicate that the denoising of images employing the proposed BSF ABC technique yields good quality and the ability to remove noise while preventing the features of the image from being lost in the denoising process. The denoised image quality obtained by the proposed method achieves a 20% increase compared with other recently developed techniques in the field of biologically inspired approaches.
基于abc自适应滤波的航空图像去噪方法
如今,数字图像在帮助解释现象和通过各种类型的媒体而不是使用文本吸引人们的注意力方面发挥着越来越重要的作用。然而,数字图像的质量可能会因其录制或通过网络传输过程中产生的噪声而下降。因此,去除图像噪声,即“图像去噪”,是数字图像处理的主要任务之一。在早期的研究中,已经开发并提出了各种方法来去除图像中的噪声。例如,在最近的文献中,使用度量滤波器来消除噪声受到了研究人员的广泛关注。然而,这些算法在搜索最优滤波系数时的收敛速度较低。过去几年的研究发现,生物学启发的方法是用于寻找最佳解决方案的更有前途的元启发式方法之一。本文提出了一种基于best-so-far (BSF) ABC算法与自适应滤波器相结合的图像去噪方法,以提高在去噪过程中搜索最优滤波器系数的性能。实验结果表明,采用BSF ABC技术对图像进行去噪后,图像的去噪效果良好,能够有效地去除噪声,同时避免了图像特征在去噪过程中的丢失。与生物启发方法领域最近开发的其他技术相比,该方法获得的去噪图像质量提高了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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