ASSESSMENT OF THE IRIS RECOGNITION USING EDGE DETECTION ALONG BENCHMARK DATASETS
DOI:
https://doi.org/10.55197/qjssh.v4i3.250Keywords:
recognition, assessment, image quality, edge detectionAbstract
An individual's identity has grown more essential for individuals to satisfy modern corporate the community's higher safety standards. Iris represents one of the finest and most precise biometric systems now in utilization, with multiple edge detection methods used. As a consequence, understanding the different kinds of edge detection algorithmic methods which are now under operation is crucial. Three edge detection methods are used to be assessed on iris data during the present research. These methodologies are carried out using the MATLAB environment, which provides the evaluation with verified results. CASIA and MMU are the datasets that are used for this purpose. In contrast, the results reveal that the canny edge detection method works quite efficiently. Visual quality is crucial in vision-based recognition of objects. The present research assesses the visual aesthetic using various quality indicators such as PSNR and MSE. When compared to PSNR and MSE, however, MSE is recognized as the best image quality statistic.
References
Alonso-Fernandez, F., Farrugia, R.A., Bigun, J., Fierrez, J., Gonzalez-Sosa, E. (2018): A survey of super-resolution in iris biometrics with evaluation of dictionary-learning. – IEEE Access 7: 6519-6544.
Ansari, A., Danyali, H., Helfroush, M.S. (2017): HS remote sensing image restoration using fusion with MS images by EM algorithm. – IET Signal Processing 11(1): 95-103.
Bhatt, D., Patel, C., Talsania, H., Patel, J., Vaghela, R., Pandya, S., Modi, K., Ghayvat, H. (2021): CNN variants for computer vision: history, architecture, application, challenges and future scope. – Electronics 10(20): 28p.
Chang, S.G., Yu, B., Vetterli, M. (2000): Spatially adaptive wavelet thresholding with context modeling for image denoising. – IEEE Transactions on Image Processing 9(9): 1522-1531.
Elmasry, S.A., Awad, W.A., Abd El-hafeez, S.A. (2020): Review of different image fusion techniques: Comparative study. – In Internet of Things-Applications and Future: Proceedings of ITAF 2019, Springer Singapore 10p.
Khmag, A., Ramli, A.R., Kamarudin, N. (2019): Clustering-based natural image denoising using dictionary learning approach in wavelet domain. – Soft Computing 23(17): 8013-8027.
Kittisuwan, P. (2018): Low-complexity image denoising based on mixture model and simple form of MMSE estimation. – International Journal of Wavelets, Multiresolution and Information Processing: 16(06): 12p.
Li, T.Y., Zhang, F., Guo, W., Shen, J.L., Sun, M.Q. (2022): An FPGA‐based JPEG preprocessing accelerator for image classification. – The Journal of Engineering 2022(9): 919-927.
Pion-Tonachini, L., Kreutz-Delgado, K., Makeig, S. (2019): ICLabel: An automated electroencephalographic independent component classifier, dataset, and website. – NeuroImage 198: 181-197.
Pleschberger, M., Schrunner, S., Pilz, J. (2020): An explicit solution for image restoration using Markov random fields. – Journal of Signal Processing Systems 92(2): 257-267.
Poursaberi, A., Araabi, B.N. (2005): A novel iris recognition system using morphological edge detector and wavelet phase features. – ICGST International Journal on Graphics, Vision and Image Processing 5(6): 9-15.
Razzak, M.I., Naz, S., Zaib, A. (2018): Deep learning for medical image processing: Overview, challenges and the future. – Classification in BioApps: Automation of Decision Making 30p.
Saravani, S., Shad, R., Ghaemi, M. (2018): Iterative adaptive Despeckling SAR image using anisotropic diffusion filter and Bayesian estimation denoising in wavelet domain. – Multimedia Tools and Applications 77: 31469-31486.
Shahrasbi, B., Rahnavard, N. (2016): Model-based nonuniform compressive sampling and recovery of natural images utilizing a wavelet-domain universal hidden Markov model. – IEEE Transactions on Signal Processing 65(1): 95-104.
Shams, M.A., Anis, H.I., El-Shahat, M. (2021): Denoising of heavily contaminated partial discharge signals in high-voltage cables using maximal overlap discrete wavelet transform. – Energies 14(20): 22p.
Shinde, B.S., Dani, A.R. (2012): The Origins of Digital Image Processing & Application areas in Digital Image Processing Medical Images. – IOSR Journal of Engineering 1(1): 066-071.
Sun, Y., Hua, Y. (2018): Image Preprocessing of Iris Recognition. – In 2018 IEEE 3rd International Conference on Integrated Circuits and Microsystems (ICICM), IEEE 4p.