A FACE SPOOFING DETECTION SYSTEM USING SURF ANALYSIS BASED ON GENETIC ALGORITHM AND ARTIFICIAL INTELLIGENCE TECHNIQUE
Journal: International Journal of Engineering Sciences & Research Technology (IJESRT) (Vol.9, No. 9)Publication Date: 2020-09-30
Authors : Nikita; Poonam Chaudhary;
Page : 125-135
Keywords : Biometric System; Face Spoofing; SURF; Genetic Algorithm; CNN;
Abstract
Modern face biometric systems are susceptible to spoofing attacks and a secure face spoof detection system demands the capability to recognize whether a face is from a real person or a spoofed image that is created by an unauthenticated person. Inspired by the feature selection algorithm, characterization of printing artifacts, and differences in light reflection, we proposed to approach the problem of spoofing detection from a pattern analysis point of view. Indeed, face prints often contain printing quality faults that can be well detected using pattern features, the Speech up Robust Feature (SURF) descriptor. Hence, introduces a novel approach based on face pattern image analysis to find out if there is live in front of a camera or a printed face. The proposed approach analyzes the pattern and quality of the facial images using the SURF descriptor as a feature extraction algorithm. Compared to a lot of previous works, our proposed face spoofing detection approach is robust, computationally fast, and does not require user-cooperation. In addition, the feature optimization technique is used for the selection of a unique feature set from the ROI of face images. Convolutional Neural Network (CNN) classifier is used for the training of the proposed spoof detection system. It is seen that the designed hybrid system face spoof detection achieves high performance than the existing system and execution time is also well. The proposed method is assessed using the MATLAB simulator in computer vision and image processing toolbox. The experimental analysis on a publicly accessible database presented brilliant results compared to existing works by using the concept of feature optimization and artificial intelligence technique.
Other Latest Articles
- ENDOGENOUS RENEWABLE ENERGIES CONVERSION INTO ELECTRICITY FOR OPTIMAL PUMPING OF AQUIFERS GROUNDWATER IN THE SAHELIAN AREA: CASE STUDY IN BURKINA FASO
- COMPUTERIZED TELECOM NETWORK SPARE PARTS MANAGEMENT SYSTEM
- IMPLEMENTATION BASED ON 0.18 µM CMOS TECHNIQUES FOR DIGITAL PLL SYNTHESIZER IN LOW LOCKING TIME
- SMC CONTROL APPLIED TO A BUCK CONVERTER: COMPARISON TO A PID CONTROLLER
- A QUALITATIVE APPROACH TO IDENTIFYING STRUCTURAL DEFICIENCIES AND DAMAGES IN TIMBER REINFORCED MASONRY BUILDINGS AT HISTORIC JEDDAH AND THEIR CAUSES
Last modified: 2020-10-06 08:27:33