Abstract

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.

Highlights

  • Intensified charge-coupled device (ICCD) images are captured by ICCD sensors in extremely low-light conditions [1]

  • 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

  • We attempt to remove the randomly clustered noise in the ICCD images that are captured by ICCD sensors, while preserving their textural information

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Summary

Introduction

Intensified charge-coupled device (ICCD) images are captured by ICCD sensors in extremely low-light conditions [1]. In [2], we studied this problem based on suitable for the randomly clustered noise in ICCD images. We attempt to remove the randomly clustered noise in the ICCD images that are captured by ICCD sensors, while preserving their textural information. The ICCD image can be classified into noisy patches and noise-free patches based on the significance of the clustered noise To this end, we over-segment the ICCD image into non-overlapped patches and each patch does not include obvious structural information, for which we adopt the watershed algorithm [20].

Related Models
Hypergraph and Hypergraph Cut
Spectral Clustering
Robust Principal Component Analysis
Framework of the Proposed Denoising Algorithm
Over-Segmentation
Down-Sampling and Up-Sampling for Residual Estimation
Construction of Hyperedges and Their Weights
Patch Classification and Recovery
Post-Processing by RPCA
Experiments and Analysis
Parameter Determination in Constructing the Hypergraph
Verify the Effectiveness of the Hypergraph Cut
Verify the Performance of the Proposed Denoising Algorithm
Verify the Effectiveness of effectiveness the RPCA algorithm in theof
Time Complexity of the Proposed Algorithm
Findings
Conclusions
Full Text
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