Summary

PhD. in computer science work in remote scencing and GIS department/ Lab of sismology and spatial data analysis / colledge of science / university of baghdad former work place : computer science deoartment / colledge of science / university of baghdad

Qualifications

programming skills: Python, C#, C++, Java cryptography, compression, pattern recognition, multimedia, AI

Responsibility

teaching and data analysis

Research Interests

Image processing, DSP, cryptography, Deep learning, and pattern recognetion

Academic Area

Multimedia & AI

Publication Date
Sun Jan 30 2022
Classification and Measurement of Land Cover of Wildfires in Australia Using Remote Sensing
...Show More Authors

     Remote sensing techniques used in many studies for classfying and measuring of wildfires. Satellite Landsat8(OLI) imagery is used in the presented work. The satellite is considered as a near-polar orbit, with a high multispectral resolution for covering Wollemi National Park in Australia. The work aims to study and measure wildfire natural resources prior to and throughout fire breakout which occurred in Wollemi National Park in Australia for a year (October, 2019), as well as analyzing the harm resulting from such wildfires and their effects on earth and environment through recognizing satellite images for studied region prior to and throughout wildfires. A discussion of methods for computing the affecred area i

... Show More
View Publication Preview PDF
Scopus (4)
Scopus Crossref
Publication Date
Sun Apr 26 2020
Selective Image Encryption Based on DCT, Hybrid Shift Coding and Randomly Generated Secret Key
...Show More Authors

Most of today’s techniques encrypt all of the image data, which consumes a tremendous amount of time and computational payload. This work introduces a selective image encryption technique that encrypts predetermined bulks of the original image data in order to reduce the encryption/decryption time and the
computational complexity of processing the huge image data. This technique is applying a compression algorithm based on Discrete Cosine Transform (DCT). Two approaches are implemented based on color space conversion as a preprocessing for the compression phases YCbCr and RGB, where the resultant compressed sequence is selectively encrypted using randomly generated combined secret key.
The results showed a significant reduct

... Show More
View Publication Preview PDF
Scopus (14)
Crossref (5)
Scopus Crossref
Publication Date
Sat Nov 28 2020
Color Image Compression System by using Block Categorization Based on Spatial Details and DCT Followed by Improved Entropy Encoder
...Show More Authors

In this paper, a new high-performance lossy compression technique based on DCT is proposed. The image is partitioned into blocks of a size of NxN (where N is multiple of 2), each block is categorized whether it is high frequency (uncorrelated block) or low frequency (correlated block) according to its spatial details, this done by calculating the energy of block by taking the absolute sum of differential pulse code modulation (DPCM) differences between pixels to determine the level of correlation by using a specified threshold value. The image blocks will be scanned and converted into 1D vectors using horizontal scan order. Then, 1D-DCT is applied for each vector to produce transform coefficients. The transformed coefficients will be qua

... Show More
View Publication Preview PDF
Scopus (6)
Crossref (3)
Scopus Crossref
No Events Found