Texture Feature Extraction to Colorize Gray Images
Citations Over Time
Abstract
This work presents a simple process for gray image colorization, using a colored image which is similar to this gray scale image but not the colorized version of the gray image. This colored image is retrieved from the data base of colored images that has been created for this purpose. Here, the texture properties of the colored images are extracted and stored. For the purpose of colorization these features are compared with those of the gray image to be colorized and the best matching image is found out from the database. For colorization of this gray scale image a decorrelated color space YCbCr is utilized. This technique is completely automatic and no human intervention is required in the process of colorization. Apart from this the technique presented here is very fast and produces good quality results as compared to the conventional colorization methods. Texture features used here to calculate a texture similarity measure are energy, entropy, contrast, homogeneity, autocorrelation based on correlation matrix as well as coarseness and directionality.
Related Papers
- → Color-to-Grayscale: Does the Method Matter in Image Recognition?(2012)372 cited
- → Using grayscale images for object recognition with convolutional-recursive neural network(2016)70 cited
- → Deep learning-based long-distance optical UAV detection: color versus grayscale(2023)2 cited
- → Foreground object segmentation from binocular stereo video(2005)2 cited
- → 6-DOF object localization by combining monocular vision and robot arm kinematics(2017)1 cited