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A Denoising Method for Randomly Clustered Noise in ICCD Sensing Images Based on Hypergraph Cut and Down Sampling

机译:基于超图割和下采样的ICCD传感图像中随机聚集噪声的降噪方法

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摘要

Intensified charge-coupled device (ICCD) images are captured by ICCD sensors in extremely low-light conditions. They often contains spatially clustered noises and general filtering methods do not work well. We find that the scale of the clustered noise in ICCD sensing images is often much smaller than that of the true structural information. Then the clustered noise can be identified by properly down-sampling and then up-sampling the ICCD sensing image and comparing it to the noisy image. Based on this finding, we present a denoising algorithm to remove the randomly clustered noise in ICCD images. First, we over-segment the ICCD image into a set of flat patches, and each patch contains very little structural information. Second, we classify the patches into noisy patches and noise-free patches based on the hypergraph cut method. Then the noise-free patches are easily recovered by the general block-matching and 3D filtering (BM3D) algorithm, since they often do not contain the clustered noise. The noisy patches are recovered by subtracting the identified clustered noise from the noisy patches. After that, we could get the whole recovered ICCD image. Finally, the quality of the recovered ICCD image is further improved by diminishing the remaining sparse noise with robust principal component analysis. Experiments are conducted on a set of ICCD images and compared with four existing denoising algorithms, which shows that the proposed algorithm removes well the randomly clustered noise and preserves the true textural information in the ICCD sensing images.
机译:ICCD传感器在极弱的光线条件下捕获增强的电荷耦合器件(ICCD)图像。它们通常包含空间聚集的噪声,并且一般的滤波方法效果不佳。我们发现,ICCD感测图像中的聚集噪声的规模通常比真实结构信息的规模小得多。然后,可以通过对ICCD感测图像进行适当的降采样然后升采样,然后将其与噪声图像进行比较,来识别聚集的噪声。基于此发现,我们提出了一种去噪算法,以去除ICCD图像中的随机聚类噪声。首先,我们将ICCD图像过度分割为一组平坦的补丁,每个补丁都包含很少的结构信息。其次,基于超图切割方法,将补丁分为噪声补丁和无噪声补丁。然后,由于常规的块匹配和3D滤波(BM3D)算法通常不包含聚类的噪声,因此无噪声的补丁很容易恢复。通过从嘈杂的补丁中减去识别出的聚类噪声,可以恢复嘈杂的补丁。之后,我们可以获得整个恢复的ICCD图像。最后,通过使用健壮的主成分分析来减少剩余的稀疏噪声,可以进一步提高恢复的ICCD图像的质量。在一组ICCD图像上进行了实验,并与四种现有的降噪算法进行了比较,结果表明,该算法能够很好地消除随机聚类的噪声,并在ICCD传感图像中保留真实的纹理信息。

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