Abstract

In this study, we propose a face recognition scheme using local Zernike moments (LZM), which can be used for both identification and verification. In this scheme, local patches around the landmarks are extracted from the complex components obtained by LZM transformation. Then, phase magnitude histograms are constructed within these patches to create descriptors for face images. An image pyramid is utilized to extract features at multiple scales, and the descriptors are constructed for each image in this pyramid. We used three different public datasets to examine the performance of the proposed method:Face Recognition Technology (FERET), Labeled Faces in the Wild (LFW), and Surveillance Cameras Face (SCface). The results revealed that the proposed method is robust against variations such as illumination, facial expression, and pose. Aside from this, it can be used for low-resolution face images acquired in uncontrolled environments or in the infrared spectrum. Experimental results show that our method outperforms state-of-the-art methods on FERET and SCface datasets.

Highlights

  • Face recognition is actively used in many applications, such as entertainment, social media, security, and law enforcement

  • Faces in the Wild (LFW) [55], and Surveillance Cameras Face (SCface) [56] datasets, which have very different characteristics from each other, we show the performance of MS-local Zernike moments (LZM) on unconstrained and low-resolution images acquired in uncontrolled environments or in infrared spectrum

  • We introduced a face recognition scheme using the LZM transformation

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Summary

Introduction

Face recognition is actively used in many applications, such as entertainment, social media, security, and law enforcement. For real-world security-related problems, powerful systems are needed that can work on images with different quality and resolutions recorded in different spectra and obtained from controlled and uncontrolled environments. In addition to illuminated environments, to enable recognition in dark environments, heterogeneous methods are developed to compare the images in infrared and visible spectra [4]. Another example of heterogeneous face recognition is sketch-photo matching [4], which is often used to detect suspects in forensic cases. We propose a face recognition scheme for 2D still images in visible and infrared spectra

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