结合使用 REDNet 和注意力通道模块提高图像清晰度

Rico Halim, Gede Putra Kusuma
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引用次数: 0

摘要

:我们研究的主要目的是提高图像去噪的效率,特别是在数据有限的情况下,如 BSD68 数据集。由于构建模型的复杂性,有限的数据给实现最佳结果带来了挑战。为了解决这一难题,我们提供了一种方法,将通道注意、批量归一化和丢弃方法纳入当前的 REDNet 框架。我们的研究表明,在不同的噪声水平下,PSNR(峰值信噪比)和 SSIM(结构相似性指数)等性能参数都有所提高。当噪音水平为 15 时,我们获得了 34.9858 dB 的峰值信噪比(PSNR)和 0.9371 的结构相似性指数(SSIM)。当噪音水平为 25 时,我们的测试结果为 31.7886 分贝的峰值信噪比(PSNR)和 0.8876 的结构相似性指数(SSIM)。此外,在噪音水平为 50 时,我们的峰值信噪比 (PSNR) 为 27.9063 分贝,结构相似性指数 (SSIM) 为 0.7754。事实证明,信道关注、批量归一化和丢弃是提高图像去噪效果的关键因素。通道注意方法使模型能够选择并集中处理图像内部的关键信息,而批量归一化和剔除技术则在整个训练过程中提供稳定性并缓解过拟合问题。我们的研究突出了这三种策略的有效性,并强调将它们整合在一起是解决图像去噪工作中数据稀缺所带来的限制的一种新方法。这强调了在数据集有限的情况下,创建可靠、有效的图像去噪方法的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Image Clarity with the Combined Use of REDNet and Attention Channel Module
: The primary aim of our study is to improve the e ffi cacy of image denoising, specifically in situations when there is a limited availability of data, such as the BSD68 dataset. Insu ffi cient data presents a challenge in achieving optimal outcomes due to the complexity involved in constructing models. In order to tackle this di ffi culty, we provide a method that incorporates Channel Attention, Batch Normalization, and Dropout approaches into the current REDNet framework. Our investigation indicates enhancements in performance parameters, such as PSNR (Peak Signal to Noise Ratio) and SSIM (Structural Similarity Index), across various levels of noise. With a noise level of 15, we obtained a Peak Signal-to-Noise Ratio (PSNR) of 34.9858 dB and a Structural Similarity Index (SSIM) of 0.9371. At a noise level of 25, our tests yielded a PSNR of 31.7886 decibels and an SSIM of 0.8876. In addition, at a noise level of 50, we achieved a Peak Signal-to-Noise Ratio (PSNR) of 27.9063 decibels and a Structural Similarity Index (SSIM) of 0.7754. The incorporation of Channel Attention, Batch Normalization, and Dropout has been demonstrated to be a crucial element in enhancing the e ffi cacy of image denoising. The Channel Attention approach enables the model to choose and concentrate on crucial information inside the image, while Batch Normalization and Dropout techniques provide stability and mitigate overfitting issues throughout the training process. Our research highlights the e ff ectiveness of these three strategies and emphasizes their integration as a novel way to address the constraints presented by the scarcity of data in image denoising jobs. This emphasizes the significant potential in creating dependable and e ff ective image denoising methods when dealing with circumstances when there is a limited dataset.
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来源期刊
International Journal of Computing and Digital Systems
International Journal of Computing and Digital Systems Business, Management and Accounting-Management of Technology and Innovation
CiteScore
1.70
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111
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