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Contrast-based fusion of noisy images using discrete wavelet transform

机译:基于离散小波变换的基于噪声的图像融合

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摘要

Development of efficient fusion algorithms is becoming increasingly important for obtaining a more informative image from several source images captured by different modes of imaging systems or multiple sensors. Since noise is inherent in practical imaging systems or sensors, an integrated approach of image fusion and noise reduction is essential. The discrete wavelet transform has been significantly successful in the development of fusion algorithms for noise-free images as well as in image denoising algorithms. A novel contrast-based image fusion algorithm is proposed in the wavelet domain for noisy source images. Novel features of the proposed fusion method are the noise reduction taking into consideration the linear dependency among the noisy source images and introducing an appropriate modification of the magnitude of the wavelet coefficients depending on the noise strength. Experiments are carried out on a number of commonly-used greyscale and colour test images to evaluate the performance of the proposed method. Results show that the performance of the proposed fusion method is better than that of other methods in terms of several frequently-used metrics, such as the structural similarity, peak signal-to-noise ratio and cross-entropy, as well as in the visual quality, even in the case of correlated noise.
机译:为了从由成像系统的不同模式或多个传感器捕获的多个源图像中获得更多信息的图像,有效融合算法的开发变得越来越重要。由于噪声是实际成像系统或传感器固有的,因此图像融合和降噪的集成方法至关重要。离散小波变换在无噪声图像融合算法以及图像去噪算法的开发中已经取得了巨大的成功。在小波域中,针对噪声源图像提出了一种新的基于对比度的图像融合算法。所提出的融合方法的新颖特征是考虑了噪声源图像之间的线性相关性并根据噪声强度对小波系数的大小进行了适当的修改,从而降低了噪声。在许多常用的灰度和彩色测试图像上进行了实验,以评估该方法的性能。结果表明,在几种常用指标(如结构相似性,峰信噪比和交叉熵)以及视觉上,所提出的融合方法的性能优于其他方法。质量,即使在相关噪声的情况下。

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    《Image Processing, IET》 |2010年第5期|p.374-384|共11页
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