Author : B.Ishwarya 1
Date of Publication :30th March 2018
Abstract: Now a day’s iris patterns play a vital role in gender classification. Iris patterns are distinctive and cannot be changed until it becomes unnatural. This paper focus on gender has been detected using iris images. This work presents a new method for gender classification based on features of the iris texture selected by mutual information to improve gender classification of iris images For determining the recognition performance of the system database of digitized grayscale eye images were used. This grayscale images are segmented. Traditional iris segmentation methods always time-consuming and sensitive to noise. Here, in iris recognition, the segmentation is based on Hough transform used for automatic segmentation and able to localize the circular iris and pupil region. Edge points of iris boundaries are detected with canny edges steps and the threshold values are matched with the hamming distance. The Hamming distance was employed for classification of iris images. This work comes to the conclusion that iris segmentation is an essential part of recognition system and the prediction is based on iris texture features and stop matching when a generation of Iris close match is found
Reference :
-
- Pooja Kawale, Jagruti Ghatole, Shweta Thote, Gauri Pohokar, PallaviDupare ,Karuna Gechude, “Matlab Based Iris Pattern Recognition System”, International Journal of Advanced Research in Computer Engineering & Technology (IJARCET) Volume 4 Issue 1, January 2015.
- Rehana Parwin, Swati Verma, “ A Survey: Iris Recognition Techniques & Predict Gender from Iris Images”, International Journal of Engineering Development and Research ( IJEDR), Volume 3, Issue 3 | ISSN: 2321-9939 ,2015
- Bansal A., Agarwal R.and SharmaR.K.,” Predicting Gender Using Iris Images”,Research Journal of Recent Sciences Vol.3(4), 20-26, April(2014) | ISSN 2277-2502.
- Asima Akber Abbasi, M.N.A. Khan and Sajid Ali Khan, “A Critical Survey of Iris Based Recognition Systems”, Journal of Scientific Research 15 (5): 663- 668, 2013 ISSN 1990-9233.
- Salve, S.S., & Narote, S. P. (2016, March). Iris recognition using SVM and ANN. In Wireless Communications, Signal Processing and Networking (WiSPNET), International Conference on (pp. 474-478). IEEE.