Abstract

Recently, several red-green-blue near-infrared (RGB-NIR) multispectral filter arrays (MFAs), which include near infrared (NIR) pixels, have been proposed. For extremely low light scenes, the RGB-NIR MFA sensor has been extended to receive NIR light, by adding NIR pixels to supplement for the insufficient visible band light energy. However, the resolution reconstruction of the RGB-NIR MFA, using demosaicing and color restoration methods, is based on the correlation between the NIR pixels and the pixels of other colors; this does not improve the RGB channel sensitivity with respect to the NIR channel sensitivity. In this paper, we propose a color restored image post-processing method to improve the sensitivity and resolution of an RGB-NIR MFA. Although several linear regression based color channel reconstruction methods have taken advantage of the high sensitivity NIR channel, it is difficult to accurately estimate the linear coefficients because of the high level of noise in the color channels under extremely low light conditions. The proposed method solves this problem in three steps: guided filtering, based on the linear similarity between the NIR and color channels, edge preserving smoothing to improve the accuracy of linear coefficient estimation, and residual compensation for lost spatial resolution information. The results show that the proposed method is effective, while maintaining the NIR pixel resolution characteristics, and improving the sensitivity in terms of the signal-to-noise ratio by approximately 13 dB.

Highlights

  • IntroductionSeveral attempts have been made to utilize near infrared (NIR) band information

  • Several attempts have been made to utilize near infrared (NIR) band information.Multispectral images observed in various spectrum bands, including both visible and NIR bands, have been used in remote sensing applications [1,2]

  • The proposed method solves this problem in three steps: guided filtering, based on the linear similarity between the NIR and color channels, edge preserving smoothing to improve the accuracy of linear coefficient estimation, and residual compensation for lost spatial resolution information

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Summary

Introduction

Several attempts have been made to utilize near infrared (NIR) band information. The color image is not improved with respect to the sensitivity of the NIR channel under extremely low light conditions. This apaper proposes an edge preserving smoother based pre-processing algorithm to coefficients estimate conditions, visible image with a high level of noise makes it difficult to estimate the linear the linear coefficients of the guided filter accurately. The smoothened Y channel removes the noise and texture components, that interfere with linear coefficient estimation, along the strong edges of the NIR channel This procedure allows the guided filter to estimate the correct coefficient in extremely low light scenes. The proposed algorithm maintains the color and local contrast of the RGB channel, through guided filtering and outputs the result with NIR channel level sensitivity and spatial resolution.

Problem
Post-Processing Framework
Edge Preserving andthe
Compensation with Residual Information of NIR
Experimental Results
Conclusions
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