Adaptive texture and color feature based color image compression

High compression is essential for storage and transmission of color images in multimedia communication. Efficient utilization of bandwidth and storage space is challenging task since we deal with millions of images and videos in day to day life. Lossy adaptive compression for color images is in demand as compared to grayscale images. The discrete cosine transform (DCT) is widely used in image and video coding schemes that has shown greater degree of compression as used in JPEG coder. Redundant information in an image needs to be eliminated by adopting intelligent method. In this paper, we propose efficient color and texture feature based adaptive color image compression. Color conversion from RGB to YCbCr is performed to extract color and texture features. The extracted features are used to select non-zero (significant) DCT coefficients. The storage space and bandwidth during transmission is efficiently utilized by encoding non-zero DCT coefficients and thereby preserving texture and color information in the reconstructed image. Experimentation has been carried out on different image formats successfully. The proposed technique is simple and straight forward. A good compression has been achieved with good MSE and PSNR. Experimental results for adaptive, using all coefficients and RGB color model with 20 coefficients are computed in terms of compression ratio and quality of reconstructed image are compared. The proposed adaptive method has achieved good compression ratio by retaining color and texture features.

[1]  Lahouari Ghouti,et al.  Image compression using texture modeling , 2005, 2005 IEEE International Symposium on Circuits and Systems.

[2]  Anil K. Jain,et al.  Image data compression: A review , 1981, Proceedings of the IEEE.

[3]  John W. Woods,et al.  Adaptive subsampling of color images , 1994, Proceedings of 1st International Conference on Image Processing.

[4]  Olivier Déforges,et al.  Adaptive pixel/patch-based synthesis for texture compression , 2011, 2011 18th IEEE International Conference on Image Processing.

[6]  M.,et al.  Statistical and Structural Approaches to Texture , 2022 .

[7]  Marek Domanski,et al.  High-compression of chrominance data by use of segmentation of luminance , 2000, 2000 10th European Signal Processing Conference.

[8]  Siddharth Nagar,et al.  Image Compression Using Discrete Cosine Transform , 2008 .

[9]  Robert M. Haralick,et al.  Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..

[10]  Murat Kunt,et al.  Image Data Compression By Contour Texture Modelling , 1983, Other Conferences.

[11]  Shen-Chuan Tai,et al.  An adaptive 3-D discrete cosine transform coder for medical image compression , 2000, IEEE Transactions on Information Technology in Biomedicine.

[12]  Mark Nelson,et al.  The data compression book (2nd ed.) , 1995 .

[13]  Thomas Sikora,et al.  Shape-adaptive DCT for generic coding of video , 1995, IEEE Trans. Circuits Syst. Video Technol..

[14]  Thomas W. Ryan,et al.  Image compression by texture modeling in the wavelet domain , 1996, IEEE Trans. Image Process..

[15]  Daidi Zhong,et al.  Pattern recognition by grouping areas in DCT compressed images , 2004, Proceedings of the 6th Nordic Signal Processing Symposium, 2004. NORSIG 2004..