Self-organizing map applied to image denoising

Michel Haritopoulos, Hujun Yin, N. Allinson
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引用次数: 2

Abstract

We treat self-organizing maps (SOMs) as means for denoising of images corrupted by multiplicative noise. To achieve this goal, we propose a scheme for blind source separation based on a nonlinear topology preserving mapping as it is performed by SOMs. Despite the assumption that only two noisy frames of the same image scene are available, we show that by a suitable post-processing step based on the estimates provided by the SOM, one can obtain enhanced versions of the originally noisy scenes. Our work is illustrated by application results of the proposed method to test and real images.
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自组织映射在图像去噪中的应用
我们将自组织映射(SOMs)作为对被乘性噪声损坏的图像去噪的手段。为了实现这一目标,我们提出了一种基于非线性拓扑保持映射的盲源分离方案,因为它是由SOMs执行的。尽管假设同一图像场景中只有两个噪声帧可用,但我们表明,通过基于SOM提供的估计的适当后处理步骤,可以获得原始噪声场景的增强版本。我们的工作通过测试和实际图像的应用结果来说明。
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