Christian Tchito Tchapga

Work place: Research Unity of Condensed Matter, Electronics and Signal Processing, Department of Physics, Faculty of Science, University of Dschang, P.O.Box 67 Dschang, Cameroon

E-mail: tchitochristian@gmail.com

Website:

Research Interests: Embedded System, Computational Learning Theory, Computer systems and computational processes, Computational Science and Engineering

Biography

Tchapga Tchito Christian was born in 1981 in Yaoundé-Cameroon. He obtained a MSc degree in Electronics in 2010 from University of Dschang, Mr Tchapga is attending a PhD program in Electronics in University of Dschang where his main items of research include Biomedical Signal Processing, Artificial Intelligence, and Internet of Things, Telemedecine and Biomedical device design. He teaches in the Department of Electrical and Electronic Engineering of the College of Technology / University of BUEA, since 2012 where he is actually the Head of Division of Internship. He works with, Laboratoire d’Electronique et Traitement du Signal (LETS), Laboratoire d’Automatique et d’Informatique Appliquée (LAIA), Research Group on Experimental and Applied Physics for Sustainable Development (EAPHYSUD) where his main items of research include Web Technologies, Embedded Systems, Computational Intelligence.

Author Articles
A Machine Learning Algorithm for Biomedical Images Compression Using Orthogonal Transforms

By Aurelle Tchagna Kouanou Daniel Tchiotsop Rene Tchinda Christian Tchito Tchapga Adelaide Nicole Kengnou Telem Romanic Kengne

DOI: https://doi.org/10.5815/ijigsp.2018.11.05, Pub. Date: 8 Nov. 2018

Compression methods are increasingly used for medical images for efficient transmission and reduction of storage space. In this work, we proposed a compression scheme for colored biomedical image based on vector quantization and orthogonal transforms. The vector quantization relies on machine learning algorithm (K-Means and Splitting Method). Discrete Walsh Transform (DWaT) and Discrete Chebyshev Transform (DChT) are two orthogonal transforms considered. In a first step, the image is decomposed into sub-blocks, on each sub-block we applied the orthogonal transforms. Machine learning algorithm is used to calculate the centers of clusters and generates the codebook that is used for vector quantization on the transformed image. Huffman encoding is applied to the index resulting from the vector quantization. Parameters Such as Mean Square Error (MSE), Mean Average Error (MAE), PSNR (Peak Signal to Noise Ratio), compression ratio, compression and decompression time are analyzed. We observed that the proposed method achieves excellent performance in image quality with a reduction in storage space. Using the proposed method, we obtained a compression ratio greater than 99.50 percent. For some codebook size, we obtained a MSE and MAE equal to zero. A comparison between DWaT, DChT method and existing literature method is performed. The proposed method is really appropriate for biomedical images which cannot tolerate distortions of the reconstructed image because the slightest information on the image is important for diagnosis. 

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