Performance Evaluation of Face Recognition based on Multiple Feature Descriptors using Euclidean Distance Classifier
Journal: International Journal of Advanced Networking and Applications (Vol.10, No. 03)Publication Date: 2018-12-01
Authors : Sunil Swamilingappa Harakannanavar; Prashanth Chikkanayakanahalli Renukamurthy; Sapna Patil; Kori Basava Raja;
Page : 3864-3879
Keywords : Face identification; Stationary Wavelet Transform; Discrete Cosine Transform; Local Ternary Pattern; Success Rate;
Abstract
Personal Identification based on face recognition is receiving extensive attention over the last few years in both research and real time applications due to increasing emphasis on security. In this paper, Face Recognition based on Stationary Wavelet Transform (SWT), Discrete Cosine Transform (DCT) and Local Ternary Pattern (LTP) is presented. Face images are resized. SWT and DCT are applied on face images to produce features. LTP is applied on SWT features. SWT, DCT and LTP features are concatenated to get final features. Features of test and database images are compared using Euclidean distance. It is found that Total Success Rate of the proposed system is better than existing systems.
Other Latest Articles
- Sentimental Analysis for Social Media – A Review
- An Overview of Dynamic Adaptive Streaming over HTTP (DASH) applications over Information-Centric Networking (ICN)
- The Effect of Using COAP Protocol on Reducing Energy Consumption in Smart Houses (Case Study: Uromieh Culture House)
- Internet of Things Enabled Vehicular and Ad Hoc Networks for Smart City Traffic Monitoring and Controlling: A Review
- Blended Learning Model Supported by Recommender System and up-to-date Technologies
Last modified: 2018-11-30 16:46:56