MRI brain image compression using spatial fuzzy clustering technique

Medical imaging has a great impact in the field of diagnosis and surgical planning. The coding of medical images differ from standard image coding as it incorporates the integrity of preserving the clinically critical information with reduction in storage space. Efficient image compression technique is essential to make the compact representation of the medical data. The goal of the proposed technique is to preserve the clinical useful information with significant improvement in peak signal to noise ratio (PSNR) and compression ratio. In the proposed work modified set partitioning in hierarchical tree (MSPIHT) is used to code the curvelet coefficients of the clinical region of interest (CROI) and SPIHT to code the Biorthogonal Wavelet coefficients of the background segmented with spatial fuzzy C means (sFCM) clustering. The proposed work compresses the MRI brain images with increased PSNR and provide efficient representation of edges in DICOM (Digital Imaging and Communications in Medicine) images.

[1]  Gerlind Plonka-Hoch,et al.  The Curvelet Transform , 2010, IEEE Signal Processing Magazine.

[2]  Witold Pedrycz,et al.  Clustering Spatiotemporal Data: An Augmented Fuzzy C-Means , 2013, IEEE Transactions on Fuzzy Systems.

[3]  Minh N. Do,et al.  Ieee Transactions on Image Processing the Contourlet Transform: an Efficient Directional Multiresolution Image Representation , 2022 .

[4]  David L. Donoho,et al.  Curvelets, multiresolution representation, and scaling laws , 2000, SPIE Optics + Photonics.

[5]  Wen-Jyi Hwang,et al.  Scalable medical data compression and transmission using wavelet transform for telemedicine applications , 2003, IEEE Transactions on Information Technology in Biomedicine.

[6]  Lihong Zhao,et al.  Medical image lossless compression based on combining an integer wavelet transform with DPCM , 2009 .

[7]  Abdul Khader Jilani Saudagar,et al.  Image compression approach with ridgelet transformation using modified neuro modeling for biomedical images , 2013, Neural Computing and Applications.

[8]  Tzong-Jer Chen,et al.  Fuzzy c-means clustering with spatial information for image segmentation , 2006, Comput. Medical Imaging Graph..

[9]  Patricio A. Vela,et al.  Interactive Medical Image Segmentation using PDE Control of Active Contours , 2013, IEEE Transactions on Medical Imaging.

[10]  Din-Chang Tseng,et al.  Wavelet-based medical image compression with adaptive prediction , 2005, 2005 International Symposium on Intelligent Signal Processing and Communication Systems.

[11]  Hayder Radha,et al.  Wavelet-based contourlet transform and its application to image coding , 2004, 2004 International Conference on Image Processing, 2004. ICIP '04..

[12]  Minh N. Do,et al.  The finite ridgelet transform for image representation , 2003, IEEE Trans. Image Process..

[13]  Emmanuel J. Candès,et al.  The curvelet transform for image denoising , 2002, IEEE Trans. Image Process..