Contrast preserving image decolorization combining global features and local semantic features

Image decolorization known as the process to transform a color image to a grayscale one is widely used in single-channel image processing, black and white printing, etc. It is a dimension reduction process which inevitably suffers from information loss. The general goal of image decolorization is to preserve the color contrast of the color image. Traditional image decolorization methods are generally divided into local methods and global methods. However, local methods are not accurate enough to process local pixel blocks which may tend to cause local artifacts. While global methods cannot deal well in local color blocks, which are usually time-consuming, too. Therefore, this paper presents a way to combine the local semantic features and the global features. The traditional image decolorization method uses the low-level features of an image. Instead, in this paper, the convolution neural network is used to learn the global features and local semantic features of an image which can better preserve the contrast in both local color blocks and adjacent pixels of the color image. Finally, the global features and the local semantic features are combined to decolorize the image. Experiments indicate that our method outperforms the state of the arts in terms of contrast preservation.

[1]  V. Sowmya,et al.  Significance of incorporating chrominance information for effective color-to-grayscale image conversion , 2016, Signal, Image and Video Processing.

[2]  Nadia Magnenat-Thalmann Welcome to the year 2016 , 2015, The Visual Computer.

[3]  Jung-San Lee,et al.  Selective scalable secret image sharing with verification , 2015, Multimedia Tools and Applications.

[4]  Reiner Eschbach,et al.  Spatial Color-to-Grayscale Transform Preserving Chrominance Edge Information , 2004, CIC.

[5]  Hongchao Zhang,et al.  Efficient Decolorization via Perceptual Group Difference Enhancement , 2017, ICIG.

[6]  R. Hunter Photoelectric Color Difference Meter , 1958 .

[7]  Codruta O. Ancuti,et al.  Enhancing by saliency-guided decolorization , 2011, CVPR 2011.

[8]  Weiyin Ma,et al.  Efficient decolorization preserving dominant distinctions , 2016, The Visual Computer.

[9]  Bruce Gooch,et al.  Color2Gray: salience-preserving color removal , 2005, SIGGRAPH 2005.

[10]  Xiaoou Tang,et al.  Learning Partial Differential Equations for Computer Vision ∗ , 2010 .

[11]  Xiaobin Xu,et al.  Decolorization: is rgb2gray() out? , 2013, SIGGRAPH ASIA Technical Briefs.

[12]  Lei Zhang,et al.  Gradient Magnitude Similarity Deviation: A Highly Efficient Perceptual Image Quality Index , 2013, IEEE Transactions on Image Processing.

[13]  Xuelong Li,et al.  Color to Gray: Visual Cue Preservation , 2010, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[14]  J. Cohen,et al.  Color Science: Concepts and Methods, Quantitative Data and Formulas , 1968 .

[15]  Cewu Lu,et al.  Contrast Preserving Decolorization with Perception-Based Quality Metrics , 2014, International Journal of Computer Vision.

[16]  László Neumann,et al.  An Efficient Perception-based Adaptive Color to Gray Transformation , 2007, CAe.

[17]  Seungyong Lee,et al.  Robust color-to-gray via nonlinear global mapping , 2009, ACM Trans. Graph..

[18]  Jiaya Jia,et al.  Real-time contrast preserving decolorization , 2012, SA '12.

[19]  Karol Myszkowski,et al.  Apparent Greyscale: A Simple and Fast Conversion to Perceptually Accurate Images and Video , 2008, Comput. Graph. Forum.

[20]  Alexander Toet,et al.  Color-to-grayscale conversion through weighted multiresolution channel fusion , 2014, J. Electronic Imaging.

[21]  Minghui Zhang,et al.  Extended RGB2Gray conversion model for efficient contrast preserving decolorization , 2017, Multimedia Tools and Applications.

[22]  Martin Cadík,et al.  Perceptual Evaluation of Color‐to‐Grayscale Image Conversions , 2008, Comput. Graph. Forum.

[23]  Neil A. Dodgson,et al.  Decolorize: Fast, contrast enhancing, color to grayscale conversion , 2007, Pattern Recognit..

[24]  Peter Xiaoping Liu,et al.  GcsDecolor: Gradient Correlation Similarity for Efficient Contrast Preserving Decolorization , 2015, IEEE Transactions on Image Processing.

[25]  Guoping Qiu,et al.  Deep Feature Consistent Deep Image Transformations: Downscaling, Decolorization and HDR Tone Mapping , 2017, ArXiv.

[26]  Nam Ik Cho,et al.  A Color to Grayscale Conversion Considering Local and Global Contrast , 2010, ACCV.

[27]  Cewu Lu,et al.  Contrast preserving decolorization , 2012, 2012 IEEE International Conference on Computational Photography (ICCP).