Dr. OsamaAlkishriwo

Department of Electrical and Electronic Engineering faculty of Engineering

Full name

Dr. Osama A S Alkishriwo

َQualifications

Doctor of Phiosophy

Academic Rank

Assistant Professor

Biography

He received his B.Sc. degree in electronic and communication engineering from the University of Zawia, Sabratha, Libya, in 2002, and the M.Sc. degree in communication engineering from University of Tripoli, Tripoli, Libya, in 2006. In 2013. He received his Ph.D. degree in signal processing and communication from the department of Electrical and Computer Engineering, University of Pittsburgh, PA, USA. He is currently an assistant professor in the Department of Electrical and Electronic Engineering at the Faculty of Engineering. His research interests includes, Speech processing and recognition, Data Compression and Source Coding, Encryption, Steganography, Digital Watermarking, Application of Machine Learning Algorithms , Wireless Communication, Channel Estimation, Time-Frequency Analysis, image processing, and applications of wavelet transform.

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Contact Information

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الاستشهادات

الكل منذ 2017
الإقتباسات
h-index
i10-index

Qualifications

Doctor of Phiosophy

Signal Processing and Communication
University of Pittsburgh
4 ,2013

Master degree

Communication Engineering
University of Tripoli
3 ,2006

Bachelor Degree

Electronic and Communication Engineering
University of Zawia
2 ,2002

Experiences

Assistant Professor - University of Tripoli

Teaching, Research, Student mentoring and supervising, Administration duties
2018 - 2020

Lecturer - University of Tripoli

Teaching, Research, Mentoring, Administration duties
2013 - 2018

Teaching Assistant - University of Pittsburgh

Tutorial and Grading
2010 - 2013

Assistant Lecturer - University of Tripoli

Teaching, research,mentoring, administration duties
2007 - 2008

Teaching Assistant - University of Tripoli

Tutorial, Grading
2003 - 2007

Publications

Image compression using adaptive multiresolution image decomposition algorithm

With the growth of modern digital technologies, demand for transmission multimedia and digital images, which require more storage space and transmission bandwidth, has been increased rapidly. Hence, developing new image compression techniques for reducing data size without degrading the quality of the image, has gained a lot of interest recently. In this study, an adaptive multiresolution image decomposition (AMID) algorithm is proposed and its application for image compression is explored. The developed algorithm is capable of decomposing an image along the vertical, horizontal, and diagonal directions using the pyramidal multiresolution scheme. Compared to the wavelet transform, the AMID can be used for decimation with the guarantees of perfect signal reconstruction. Furthermore, the application of the AMID for image compression is explored and its performance is compared with the state-of-the-art image compression techniques. The performance of compression method is evaluated using peak signal-to-noise ratio and compression ratio. Experimental results have shown promising performance compared with the results of using other image compression approaches
Osama A. Alkishriwo(9-2020)
Publisher's website


A Novel Denoising Method Based on Discrete Linear Chirp Transform

Denoising of chirp based signals is a challenging problem in signal processing and communications. In this paper, we propose a suitable denoising algorithm based on the discrete linear chirp transform (DLCT), which provides local signal decomposition in terms of linear chirps. Analytical expression for the optimal filter response is derived. The method relies on the ability of the DLCT for providing a sparse representation to a wide class of broadband signals like chirp signals. Simulation results show the efficiency of the proposed method, especially for mono-component chirp signals.
Osama A. Alkishriwo(12-2020)
Publisher's website


Database for Arabic Speech Commands Recognition

Technology is all around us and it’s changing rapidly, expanding Internet access has had huge impacts on everyday lives as people do everything on their phones and computers. The widespread growth in the use of digital computers, have an increasing need to be able to communicate with machines in a simpler manner. One of the main tasks that can simplify communication with machines is speech recognition. In this work, we introduce the Arabic speech commands database that contains six Arabic control order words and Arabic spoken digits. The created database is used to analyze and compare the recognition accuracy and performance of three recognition techniques which are, Wavelet Time Scattering feature extraction with Support Vector Machine (SVM) classifier, Wavelet Time Scattering feature extraction with Long Short-Term Memory (LSTM) classifier, and Mel-Frequency Cepstrum Coefficients (MFCC) feature extraction with K-Nearest Neighbor (KNN) classifier. Finally, the experimental results show that the most accurate prediction of the database commands was 98.1250% given by Wavelet Time Scattering feature extraction and LSTM classifier and the fastest training time for the database was 144 minutes given by MFCC and KNN classifier. arabic 5 English 42
Osama A. Alkishriwo, Lina Tarek Benamer(12-2020)
Publisher's website