用于噪声去除的四分之一匹配非局部均值算法

Chartese Jones
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引用次数: 0

摘要

改善的观念在我们的生活中以多种形式表现出来。我们寻求更好的质量、更快的速度和更轻松的连接。为了实现我们想要的目标,我们必须提出问题。如何使流程更强大?如何提高流程效率?如何使流程更有效?图像去噪在许多行业中起着至关重要的作用,了解图像中如何存在噪声导致了多种去噪技术。这些技术包括全变分正则化、非局部正则化、稀疏表示和低秩最小化等。其中许多技术的存在是因为改进的概念。首先,我们有一个变化(问题)。这一变化引发了思考和疑问。这些变化是如何发生的以及如何处理的,在该过程的实现或故障中起着至关重要的作用。有了这种认识,首先,我们希望充分了解取得成功的过程。由于它涉及到图像去噪,非局部方法在图像重建中非常有效。特别地,非局部均值滤波器在不损失太多精细结构和细节的情况下去除噪声并锐化边缘。此外,非局部均值算法也非常精确。因此,困扰非局部均值滤波算法的缺点是计算负担,这是由于非局部平均。在本文中,我们研究了减少计算负担和提高滤波过程有效性的创新方法。对图像分析的研究表明,在降噪和保留实际特征之间存在着一场斗争,这使得降噪成为一项艰巨的任务。为了探索,我们提出了一种四分之一匹配非局部均值去噪滤波算法。滤波器有助于对图像中更集中的区域进行分类,从而提高现有非局部均值去噪方法的计算效率,并在恢复过程中为覆盖产生丰富的比较。为了考察这种新算法的结构,作者使用了最初的非局部均值滤波算法,即“最新技术”和其他选择性过程来测试新模型的有效性和效率。当将原始的非局部均值与新的四分之一匹配滤波算法进行比较时,我们平均可以将计算成本降低一半,同时提高图像质量。为了进一步测试我们的新算法,医学共振(MR)和合成孔径雷达(SAR)图像被用作真实世界应用的样本。
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Quarter match non-local means algorithm for noise removal

The notion of improving plays out in many forms in our lives. We look for better quality, faster speed, and leisurelier connections. To achieve our desired goals, we must ask questions. How to make a process stronger? How to make a process more efficient? How to make a process more effective? Image denoising plays a vital role in many professions and understanding how noise can be present in images has led to multiple denoising techniques. These techniques include total variation regularization, non-local regularization, sparse representation, and low-rank minimization just to name a few. Many of these techniques exist because of the concept of improvement. First, we have a change (problem). This change invokes thoughts and questions. How these changes occur and how they are handled play an essential role in the realization or malfunction of that process. With this understanding, first, we look to fully understand the process to achieve success. As it relates to image denoising, the non-local means is incredibly effective in image reconstruction. In particular, the non-local means filter removes noise and sharpens edges without losing too many fine structures and details. Also, the non-local means algorithm is amazingly accurate. Consequently, the disadvantage that plagues the non-local means filtering algorithm is the computational burden and it is due to the non-local averaging. In this paper, we investigate innovative ways to reduce the computational burden and enhance the effectiveness of this filtering process. Research examining image analysis shows there is a battle between noise reduction and the preservation of actual features, which makes the reduction of noise a difficult task. For exploration, we propose a quarter-match non-local means denoising filtering algorithm. The filters help to classify a more concentrated region in the image and thereby enhance the computational efficiency of the existing non-local means denoising methods and produce an enriched comparison for overlying in the restoration process. To survey the constructs of this new algorithm, the authors use the original non-local means filtering algorithm, which is coined, “State of the Art” and other selective processes to test the effectiveness and efficiency of the new model. When comparing the original non-local means with the new quarter match filtering algorithm, on average, we can reduce the computational cost by half, while improving the quality of the image. To further test our new algorithm, medical resonance (MR) and synthetic aperture radar (SAR) images are used as specimens for real-world applications.

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