Abstract

Authentication of appropriate users for accessing the liable gadgets exists as one among the prime theme in security models. Illegal access of gadgets such as smart phones, laptops comes with an uninvited consequences, such as data theft, privacy breakage and a lot more. Straight forward approaches like pattern based security, password and pin based security are quite expensive in terms of memory where the user has to keep remembering the passwords and in case of any security issue risen then the password has to be changed and once again keep remembering the recent one. To avoid these issues, in this paper an effective GAIT based model is proposed with the hybridization of Artificial Neural Network model namely Feedforward Neural Network Model with Swarm based algorithm namely Krill Herd optimization algorithm (KH). The task of KH is to optimize the weight factor of FNN which leads to the convergence of optimal solution at the end of the run. The proposed model is examined with 6 different performance measures and compared with four different existing classification model. The performance analysis shows the significance of proposed model when compared with the existing algorithms.

Highlights

  • For the verification of identity one of the most trustworthy and effective approach is Biometric method [1]

  • From the other perspective of biometric, there exits GAIT recognition [4] in which the person can be identified by their gesture such as walk, running, etc

  • GAIT type of recognition is proposed to address their problems in smart phones

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Summary

INTRODUCTION

For the verification of identity one of the most trustworthy and effective approach is Biometric method [1]. The disadvantage of this knowledgebased system is forgotten schema and stolen To overcome this disadvantage an additional feature is added in mobile phones which is the recognition of users through fingerprint biometric [10]. This helps the equipment to verify the users which further gives another step of verification [11]. GAIT type of recognition is proposed to address their problems in smart phones In this model, the embedded sensor with the device [18] observes the movement of user. If it matches with the authenticated user’s movement the phone will be unlocked Through this model the user need not any other secondary verification activity to access the gadget.

RELATED WORKS
PROBLEM STATEMENT
Information Gathering
Pre-Processing
Feature Reduction using Kernel Compactness Approximation
WORKING PRINCIPLE MULTI-LAYER PERCEPTRON IN FNN
EXPERIMENTAL EVALUATION
Case Study
Performance Measures
Findings
CONCLUSION
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