A. M. S. Tekanyi

Work place: Ahmadu Bello University/Department of Electrical and Computer Engineering, Zaria, 234, Nigeria

E-mail: amtekanyi@abu.edu.ng

Website:

Research Interests: Computational Science and Engineering, Computational Engineering, Network Architecture, Network Security, Engineering

Biography

A. M. S. Tekanyiobtained his B.Eng (Hons) degree in Electrical Engineering from the University of Sierra-Leone, Freetowm in 1990, MSc. Degree in Computer Networks from the Middlesex University, London in 2001, and PhD terminal degree in Electrical Engineering from Ahmadu Bello University, Zaria in 2014. His PhD research thesis is Telecommunication Engineering based and centered on WLAN bandwidth improvement. His research interest is focused on Telecommunications Engineering, with emphasis on finding out problems of wireless and WLAN networks and their resolutions. In other words, finding out factors affecting efficient bandwidth utilization, channel congestion, traffic delay, and worst of all traffic loss of these networks. His is also interested in very little of Computer Engineering, particularly computer network security research area and related researches in this area.

Author Articles
Medical Image Segmentation through Bat-Active Contour Algorithm

By Rabiu O. Isah Aliyu D. Usman A. M. S. Tekanyi

DOI: https://doi.org/10.5815/ijisa.2017.01.03, Pub. Date: 8 Jan. 2017

In this research work, an improved active contour method called Bat-Active Contour Method (BA-ACM) using bat algorithm has been developed. The bat algorithm is incorporated in order to escape local minima entrapped into by the classical active contour method, stabilize contour (snake) movement and accurately, reach boundary concavity. Then, the developed Bat-Active Contour Method was applied to a dataset of medical images of the human heart, bone of knee and vertebra which were obtained from Auckland MRI Research Group (Cardiac Atlas Website), University of Auckland. Set of similarity metrics, including Jaccard index and Dice similarity measures were adopted to evaluate the performance of the developed algorithm. Jaccard index values of 0.9310, 0.9234 and 0.8947 and Dice similarity values of 0.8341, 0.8616 and 0.9138 were obtained from the human heart, vertebra and bone of knee images respectively. The results obtained show high similarity measures between BA-ACM algorithm and expert segmented images. Moreso, traditional ACM produced Jaccard index values 0.5873, 0.5601, 0.6009 and Dice similarity values of 0.5974, 0.6079, 0.6102 in the human heart, vertebra and bone of knee images respectively. The results obtained for traditional ACM show low similarity measures between it and expertly segmented images. It is evident from the results obtained that the developed algorithm performed better compared to the traditional ACM.

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