Biometric systems are used for uniquely identification and verification of a person by their physiological or behavioural features. Multi-biometric system are in interest due to their advantages in improving the matching accuracy, increasing population coverage, deleting spoofing attacks and imparting fault tolerance to biometric applications. Unimodal system rely on the evidence of a single source of information whereas multi-biometric systems, if consolidate multiple sources of biometric evidences. The integration of evidences is known as fusion. In a multi-biometric system, source of biometric information used various biometric traits that can be fused and the different fusion schemes are used to enhance the security. In this paper different security mechanism are derived and find that multi-biometric system is the best Biometric Security system as compared to Unimodal Biometric System.
• Saritri.B.Patil,”A Study of Biometric Systems: Fusion Technique Application and Challenges” IJCST, Vol.3, 2012.
• A.Ross, K.Nandakumar, and A.K. Jain, “Handbook of Multibiometrics”, Springer-Verlag edition, 2006.
• V. Subbarayudu, and M. Prasad, “Multimodal Biometric System.” Paper presented at First International Conference on Emerging Trends Engineering and Technology ICETET. USA: IEEE Computer Society, 635– 6401, 2008.
• S.Nanavati, M.Thieme, and R.Nanavati, “Biometrics Identity Verification in a Networked World”. Edited by Margaret Eldridge, Adaobi Obi and Micheline Frederick. Canada: John Wiley & Sons, Inc., 2013.
• AmeyaK.Naikn,RaghunathS.HolambeJoint Encryption and Compression scheme for a multimodal telebiometric system Neurocomputing 191,69–81,2016.
• Kamal A. El Dahshan, Eman A. Karam “Score level fusion for fingerprint iris and face biometrics”, International Journal of Computer Applications (0975 – 8887) Volume 111 – No 4, February 2015.
• Mouad. M. H. Ali α & A. T. Multimodal Biometrics Enhancement Recognition System based on Fusion of Fingerprint and PalmPrint Gaikwad Global Journal of Computer Science and Technology: F Graphics & vision Volume 16 Issue, 2016.
• Nageshkumar.M, Mahesh.PK, and M.N. ShanmukhaSwamy, “An Efficient Secure Multimodal Biometric Fusion UsingPalmprintand Face Image”, IJCSI International Journal of Computer Science Issues, Vol. 2, 2009.
• Yannis Stylianou, Yannis Pantazis, Felipe Calderero, Pedro Larroy, Francois Severin, Sascha Schimke, Rolando Bonal, Federico Matta, and Athanasios Valsamakis. “GMM-Based Multimodal Biometric Verification”, Enterface’05, MONS, Belgium -Final Project Report, 2005.
• Sunil Chawla and Aashish Oberoi, Robust algorithm for iris segmentation and normalization using hough transform. Global Journal of Business Management and Information Technology, 1:69–76, 2011.
• Dzati Athiar Ramli, Salina Abdul Samad, AiniHussain,“A Multibiometric Speaker Authentication System with SVM Audio Reliability Indicator”, IAENG International Journal of Computer Science, 36:4, IJCS3, 2008.
• Arun Ross and Rohin Govindarajanb, “Feature Level Fusion Using Hand and Face Biometrics”, SPIE Conference on Biometric Technology for Human Identification II, Volume, 5779, pp.196-204(Orlando, USA) March 2005
• J.G. Daugman, “High Confidence Visual Recognition of Statistical Independence”, IEEE Transactions on Pattern Analysis and Machine Intelligence 2011.
• Haryati Jaafar et al.”A Review of multibiometric System with Fusion Strategies and Weighting Factor” / International Journal of Computer Science Engineering (IJCSE) ISSN: 2319-7323, vol. 2 No. July 2013.
• Soh, J.Deravi, F and Triylia,A.,”Multibiometrices and data fusion standardization”, in Encyclopedia of Biometrics, S.Z.Li and A.K.Jain, New York, Heidelberg:Springer,2009. [16] Noorjahan KhatoonIRACS “Multimodal Biometrics: A Review” International Journal of Computer Science and Information Technology & Security (IJCSITS), ISSN: 2249-9555 Vol. 3, No.3, June 2013
• R.Tronci, G,Giavinto and F.roli, ”Dynamic score selection for fusion of multiple biometric matcher”, proc 14 IEEE International Conference on Image Analysis and Processing, ITALY, 2007.
• KalyanVeeramachaneni, Lisa Osadciw, ArunRoss, and NishaSrinivas, “Decision-level Fusion Strategies for Correlated Biometric Classifiers”, Biometric Authentication, Springer 2004.
• Federico Castanedo” A Review of Data Fusion Techniques” The Scientific World Journal Volume, Article ID 704504,19, 2013.
• Maya V. Karki & Dr. S. Sethu Selvi “Multimodal Biometrics at Feature Level Fusion using Texture Features” International Journal of Biometrics and Bioinformatics (IJBB), Volume (7), Issue (1), 2013.
• George Chellin Chandra. J and Rajesh. R.S., “Performance Analysis of Multimodal Biometric System Authentication”, IJCSNS 290 International Journal of Computer Science and Network Security, VOL.9 No.3, March 2009.
• S.Mohan Prakash, P.Betty, K.Sivanarulselvan, ”Fusion of Multimodal Biometric using Feature and Score level Fusion” International Journal on Application in Information and Communication Engineering, Volume 2: Issue 4: April 2016
• Emanuela Marasco (et.al) Increase the security of multibiometric systems by incorporating a spoofing detection algorithm in the fusion mechanism.”2010.
• Yannis Stylianou, Yannis Pantazis, Felipe Calderero, Pedro Larroy, Francois Severin, Sascha Schimke, Rolando Bonal, Federico Matta, and Athanasios Valsamakis. “GMM-Based Multimodal Biometric Verification”, Enterface’05, MONS, Belgium -Final Project Report, 2005
• W.Yang, J. Hu, S. Wang, and C. Chen, “Mutual dependency of features in multimodal biometric systems,” Electron. Lett., vol. 51, no. 3, pp. 234–235, Feb. 2015
• Anil K.Jain, KarthikNandakumar and Abhishek Nagar, Review Article Biometric Template Security, Department of Computer science and Engineering, Michigan State University, 3115 Engineering Building, East Lansing, M148824, USA, 2007.
• Meng-Hui Lim, Sunny Verma, Guangcan Mai, Pong C. Yuen, Learning discriminability-preserving histogram representation from unordered features for multibiometric feature fused-template protection, Pattern Recogn., 60, Elsevier pp. 706–719, 2016.
• Sasidhar K. [Et Al.] Multimodal Biometric Systems – Study To Improve Accuracy And Performance [Journal]. – [S.L.] : International Journal Of Computer Science & Engineering Survey (Ijcses), Vol.1, 2010.
• Gurpreet Singh et al,”Review On Fingerprint Recognition: Minutiae Extraction and Matching Technique” International Journal of Innovation and Scientific Research ISSN 2351-8014 Vol. 10, 2014.
• Ashish Mishra “Multimodal Biometrics it is: Need for Future Systems” Volume 3 – No.4, International Journal of Computer Applications (0975 – 8887), June 2010