被信号相关噪声破坏的多通道图像的去噪效率

V. Lukin, S. Abramov, R. Kozhemiakin, M. Uss, B. Vozel, K. Chehdi
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引用次数: 3

摘要

近年来,多通道(多光谱和高光谱)传感器对原始图像的质量有了很大的提高。特别是,获取的图像中的热噪声水平已被充分降低[1]。然而,在获得的数据中仍然存在噪声水平相当高的分量(子带)图像[2,3]。另一个特点是新一代传感器的信号依赖噪声分量占主导地位[3]。有时,在多通道图像分类和解释阶段,忽略信噪比(SNR)最低的分量图像[1,2]。然而,最近的研究表明,在通过有效的预滤波技术降低噪声的条件下,可以从“噪声”子带图像中提取有用的信息[2]。因此,一个实际的任务是设计这种有效的技术,能够处理与信号相关的噪声,并分析其性能。
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Denoising efficiency for multichannel images corrupted by signal-dependent noise
Essential improvements in quality of original images formed by multichannel (multi- and hyperspectral) sensors have been gained in recent years. In particular, level of thermal noise in acquired images has been sufficiently reduced [1]. However, there are still component (sub-band) images in obtained data for which noise level is quite high [2, 3]. One more peculiarity is that signal-dependent noise component is characterized by dominant contribution [3] for new generation of sensors. Sometimes, the component images with the lowest signal-to-noise ratio (SNR) are ignored at stages of multichannel image classification and interpreting [1, 2]. However, recent studies have demonstrated that useful information can be extracted from “noisy” sub-band images under condition that noise is reduced by an efficient pre-filtering technique [2]. Thus, an actual task is to design such efficient techniques able to cope with signal-dependent noise and to analyze their performance.
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