Medical Image Denoising Using BAT Optimization Algorithm

K. Sankaran, M. Pradeepa, C. Chandra
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Abstract

Denoising is critical in medical imaging for the study of pictures, the diagnosis and treatment of illness. Image denoising approaches based on optimization are now effective, however the methods are constrained by the need for a large training set size (i.e., not successful enough for small data size). Medical picture denoising may be accomplished using the discrete wavelet transform (DWT) and a coefficient thresholding-based BAT method (CTB BAT). Denoising images by removing a residual from a noisy image yields denoised images, while most other image denoising methods start with latent clean images and work their way up to learning noise from the noisy images. Additionally, the wavelet transform is incorporated with CTB_ BAT to increase model learning accuracy and training time. Denoising strategies are compared to our model's performance in terms of peak signal-to-noise ratio and structural similarity in order to determine how well it performs compared to other medical picture denoising approaches. Our methodology outperforms other approaches in experiments, as shown by the findings.
基于BAT优化算法的医学图像去噪
在医学成像中,去噪对于图像的研究、疾病的诊断和治疗至关重要。基于优化的图像去噪方法现在是有效的,但是这些方法受到需要大的训练集大小的限制(即,对于小数据大小不够成功)。医学图像去噪可以使用离散小波变换(DWT)和基于系数阈值的BAT方法(CTB BAT)来实现。通过去除噪声图像中的残差来去噪图像,而大多数其他图像去噪方法从潜在的干净图像开始,然后从噪声图像中学习噪声。此外,将小波变换与CTB_ BAT相结合,提高了模型的学习精度和训练时间。在峰值信噪比和结构相似性方面,将去噪策略与模型的性能进行比较,以确定与其他医学图像去噪方法相比,去噪策略的性能有多好。正如研究结果所示,我们的方法在实验中优于其他方法。
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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