Abstract

This paper represents a new approach for face recognition that incorporates Prewitt edge detection, Gabor filter and Zernike moments to transform the image into a unified domain. On this joint domain, five distance metrics are constructed using Schoenberg transform for the purpose of defining efficient similarity measures for holistic face recognition. The proposed Schoenberg similarity applies Schoenberg transform to the logarithm of five existing distance metrics: Minkowski, City-Block, Euclidean, Soergel and Lorentzian metrics. The constructed Schoenberg logarithmic metrics are called SL-Minkowski, SL-City-Block, SL-Euclidean, SL-Soergel and SL-Lorentzian. These distance metrics are utilized as similarity measures after being normalized over the range [0,1] for fair comparison with existing measures. The proposed Schoenberg system can resist three problems: Change in illumination, pose and facial expression. Simulation results show that the proposed distance measures have superior performance as compared to the classical metrics: Structural Similarity Index Measure (SSIM) and Feature-based Similarity Measure (FSIM). Performance criteria are the recognition rate and the recognition confidence, defined as the similarity difference between the best match and the second-best match in the face database.

Highlights

  • Face recognition has become one of the most significant of image analysis and computer vision

  • In this study we present a hybrid method to incorporate special distance features with edge-detection and Gabor filtering to enhance the discriminative power of Zernike moments in the process of face recognition

  • Comparisons has been made with Structural Similarity Index Measure (SSIM), Feature Similarity Index (FSIM) and the Zernike moments method (Singh et al, 2011)

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Summary

Introduction

Face recognition has become one of the most significant of image analysis and computer vision. One of the main streams in face recognition is to recognize a given face image in the sense of similarity with some image in a large face-database This process involves a lot of unresolved difficulties (Jafri and Arabnia, 2009; Sang et al, 2016; Kakade, 2016). Despite the powerful features provided by Zernike moments, they may not be decisive in recognizing a face image in a large face-database. In this study we present a hybrid method to incorporate special distance features with edge-detection and Gabor filtering to enhance the discriminative power of Zernike moments in the process of face recognition. The paper is organized as follows: Section 2 presents a theoretical background on Gabor filter, Zernike moments, edge detection, metric distances, image structural similarity and the feature similarity.

Background
Implementation and Results
Simulation Results
Method
Conclusion
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