基于跳跃回归和局部聚类的自适应图像去噪方法

Subhasish Basak, Partha Sarathi Mukherjee
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引用次数: 0

摘要

图像去噪对于可靠的图像分析至关重要。本文的重点是在去噪过程中有效保留边缘和结构等关键图像特征。跃迁回归分析通常用于在噪声中估计真实的图像强度。一种方法是自适应平滑,它根据经验数据使用不同的局部邻域形状和大小;另一种方法是局部像素聚类,在减少噪声的同时保留重要细节。本手稿将这两种方法结合起来,提出了一种综合去噪技术。
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An Adaptive Image-denoising Method Based on Jump Regression and Local Clustering
Image denoising is crucial for reliable image analysis. Researchers from diverse fields have long worked on this, but we still need better solutions. This article focuses on efficiently preserving key image features like edges and structures during denoising. Jump regression analysis is commonly used to estimate true image intensity amid noise. One approach is adaptive smoothing, which uses various local neighborhood shapes and sizes based on empirical data, while another is local pixel clustering to reduce noise while maintaining important details. This manuscript combines both methods to propose an integrated denoising technique.
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