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首页> 外文期刊>Signal processing >Denoising Hyperspectral Images Using an Improved SSTV Correntropy based Method in the Presence of Non-Gaussian Noise
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Denoising Hyperspectral Images Using an Improved SSTV Correntropy based Method in the Presence of Non-Gaussian Noise

机译:在存在非高斯噪声的存在下,使用改进的SSTV管制方法去噪超细图像

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摘要

Denoising hyperspectral images (HSIs) has attracted a lot of attention in remote sensing due to its high significance in the enhancement of the quality of these images. The present methods for denoising HSIs are generally focused on Gaussian noisy environments while in practical cases, non-Gaussian noise usually exists in HSIs. In order to consider this fact, first a general model for noise is introduced. This model constitutes a non-Gaussian noise accompanied with sparse noise. Later, we use information theoretic learning criteria to introduce a cost function based on Correntropy which is formulated as an optimization problem in order to solve the denoising problem. Finally, this problem is solved using the Half-Quadratic algorithm. The results of the experiment with real data show that the proposed method can significantly reduce the noise in these images which is actually a more general form of noise.
机译:由于在提高这些图像的质量方面的高意义方面,越野高光谱图像(HSIS)在遥感中引起了很多注意力。目前用于去噪HSIS的方法通常集中在实际情况下,在实际情况下,HSIS通常存在非高斯噪声。为了考虑这一事实,首先介绍了噪声的一般模型。该模型构成了伴随着稀疏噪声的非高斯噪声。稍后,我们使用信息理论学习标准以基于管道的成本函数引入,该函数被制定为优化问题,以解决去噪问题。最后,使用半二次算法来解决这个问题。实验的实验结果表明,该方法可以显着降低这些图像中的噪声,其实际上是更一般的噪声形式。

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