Restoration of multichannel images with limited a priori information using multichannel parallel-like adaptive filters

M. Hadhoud
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引用次数: 1

Abstract

We introduce a heuristic method for adaptive multichannel restoration of degraded multispectral images when there is limited knowledge about the undegraded images and the noise. The proposed structure aims at reversing the action of the blur function on the image. The system uses number of channels equal to the number of multispectral images L. Each channel consists of L subchannel structures of two parallel adaptive filters with different cutoff frequencies and different DC (zero frequency) gain. The overall structure in each subchannel is equivalent to a filter, which has a combined LP-BP like characteristics. The resulting system has unity gain at the DC, which preserves the image local characteristics. The filter has high gain in the middle (band pass) frequency range, which produces an output image with restored edges. The filter structure gain at the high frequency range is small which reduces the high frequency noise. The adaptive filters are considered for the implementation of the proposed method. This is because they have many desirable properties and able to track the variations in the image characteristics. Multiple channel restoration results are presented and compared with single channel restoration. The results show that the proposed multiple channel restoration is very effective in restoring image details and reduces the noise amplification. Also the fine details are enhanced and preserved.
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利用多通道类平行自适应滤波器恢复有限先验信息的多通道图像
在对未退化图像和噪声了解有限的情况下,提出了一种自适应多通道恢复退化多光谱图像的启发式方法。所提出的结构旨在逆转模糊函数对图像的作用。该系统使用的通道数等于多光谱图像数L.每个通道由两个具有不同截止频率和不同直流(零频率)增益的平行自适应滤波器的L个子通道结构组成。每个子信道的整体结构相当于一个滤波器,它具有类似LP-BP的组合特性。得到的系统在直流处具有单位增益,保持了图像的局部特征。该滤波器在中间(带通)频率范围内具有高增益,从而产生具有恢复边缘的输出图像。该滤波器结构在高频范围内的增益较小,降低了高频噪声。为了实现所提出的方法,考虑了自适应滤波器。这是因为它们具有许多理想的特性,并且能够跟踪图像特性的变化。给出了多通道恢复结果,并与单通道恢复结果进行了比较。结果表明,所提出的多通道恢复方法能有效地恢复图像细节,并能有效地减小噪声放大。精细的细节也得到了增强和保存。
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