Abstract

Image colorization assigns colors to a grayscale image, which is an important yet difficult image-processing task encountered in various applications. In particular, grayscale aerial image colorization is a poorly posed problem that is affected by the sun elevation angle, seasons, sensor parameters, etc. Furthermore, since different colors may have the same intensity, it is difficult to solve this problem using traditional methods. This study proposes a novel method for the colorization of grayscale aerial images using random forest (RF) regression. The algorithm uses one grayscale image for input and one-color image for reference, both of which have similar seasonal features at the same location. The reference color image is then converted from the Red-Green-Blue (RGB) color space to the CIE L*a*b (Lab) color space in which the luminance is used to extract training pixels; this is done by performing change detection with the input grayscale image, and color information is used to establish color relationships. The proposed method directly establishes color relationships between features of the input grayscale image and color information of the reference color image based on the corresponding training pixels. The experimental results show that the proposed method outperforms several state-of-the-art algorithms in terms of both visual inspection and quantitative evaluation.

Highlights

  • Image colorization can be described as the process of assigning colors to the pixels of a grayscale image in order to increase the image’s visual appeal [1]

  • The main contributions of this paper can be summarized as follows: (1) to the best of our knowledge, this is the first work that exploits random forest (RF) regression for aerial imagery colorization, it has been used for natural image colorization [21,22,23]; (2) this paper develops a novel algorithm that establishes color relationships based on unchanged regions, which predict the color values of the changed regions; (3) this paper establishes color relationships by directly mapping the features of the input grayscale image with the color information of the reference color image; and (4) this paper performs visual and quantitative analyses that show that our method outperforms the current state-of-the-art methods

  • This paper presents a colorization algorithm for aerial imagery

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Summary

Introduction

Image colorization can be described as the process of assigning colors to the pixels of a grayscale image in order to increase the image’s visual appeal [1]. This application is often utilized in the image processing community to colorize old grayscale images or movies [2]. In the case of satellite images, modern systems acquire a panchromatic (grayscale) image, with high spatial and low spectral resolutions, and a multispectral (color) image that has complementary properties [4]. In order to perform colorization through the color information of the multispectral image while maintaining the high resolution of the panchromatic image, the two components are fused, which is

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