A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition

Facial recognition is one of the most challenging and interesting problems within the field of computer vision and pattern recognition. During the last few years, it has gained special attention due to its importance in relation to current issues such as security, surveillance systems and forensics...

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Main Authors: Noor Abdalrazak Shnain, Zahir M. Hussain, Song Feng Lu
Format: Article
Language:English
Published: MDPI AG 2017-08-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/7/8/786
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spelling doaj-414cb0445f434895961269cd93ed82fa2020-11-24T22:09:12ZengMDPI AGApplied Sciences2076-34172017-08-017878610.3390/app7080786app7080786A Feature-Based Structural Measure: An Image Similarity Measure for Face RecognitionNoor Abdalrazak Shnain0Zahir M. Hussain1Song Feng Lu2School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan 430074, ChinaFaculty of Computer Science & Mathematics, University of Kufa, Najaf 54001, IraqSchool of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan 430074, ChinaFacial recognition is one of the most challenging and interesting problems within the field of computer vision and pattern recognition. During the last few years, it has gained special attention due to its importance in relation to current issues such as security, surveillance systems and forensics analysis. Despite this high level of attention to facial recognition, the success is still limited by certain conditions; there is no method which gives reliable results in all situations. In this paper, we propose an efficient similarity index that resolves the shortcomings of the existing measures of feature and structural similarity. This measure, called the Feature-Based Structural Measure (FSM), combines the best features of the well-known SSIM (structural similarity index measure) and FSIM (feature similarity index measure) approaches, striking a balance between performance for similar and dissimilar images of human faces. In addition to the statistical structural properties provided by SSIM, edge detection is incorporated in FSM as a distinctive structural feature. Its performance is tested for a wide range of PSNR (peak signal-to-noise ratio), using ORL (Olivetti Research Laboratory, now AT&T Laboratory Cambridge) and FEI (Faculty of Industrial Engineering, São Bernardo do Campo, São Paulo, Brazil) databases. The proposed measure is tested under conditions of Gaussian noise; simulation results show that the proposed FSM outperforms the well-known SSIM and FSIM approaches in its efficiency of similarity detection and recognition of human faces.https://www.mdpi.com/2076-3417/7/8/786face recognitionstructural similarity measurefeature similarity measureedge detectionGaussian noise
collection DOAJ
language English
format Article
sources DOAJ
author Noor Abdalrazak Shnain
Zahir M. Hussain
Song Feng Lu
spellingShingle Noor Abdalrazak Shnain
Zahir M. Hussain
Song Feng Lu
A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
Applied Sciences
face recognition
structural similarity measure
feature similarity measure
edge detection
Gaussian noise
author_facet Noor Abdalrazak Shnain
Zahir M. Hussain
Song Feng Lu
author_sort Noor Abdalrazak Shnain
title A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
title_short A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
title_full A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
title_fullStr A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
title_full_unstemmed A Feature-Based Structural Measure: An Image Similarity Measure for Face Recognition
title_sort feature-based structural measure: an image similarity measure for face recognition
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2017-08-01
description Facial recognition is one of the most challenging and interesting problems within the field of computer vision and pattern recognition. During the last few years, it has gained special attention due to its importance in relation to current issues such as security, surveillance systems and forensics analysis. Despite this high level of attention to facial recognition, the success is still limited by certain conditions; there is no method which gives reliable results in all situations. In this paper, we propose an efficient similarity index that resolves the shortcomings of the existing measures of feature and structural similarity. This measure, called the Feature-Based Structural Measure (FSM), combines the best features of the well-known SSIM (structural similarity index measure) and FSIM (feature similarity index measure) approaches, striking a balance between performance for similar and dissimilar images of human faces. In addition to the statistical structural properties provided by SSIM, edge detection is incorporated in FSM as a distinctive structural feature. Its performance is tested for a wide range of PSNR (peak signal-to-noise ratio), using ORL (Olivetti Research Laboratory, now AT&T Laboratory Cambridge) and FEI (Faculty of Industrial Engineering, São Bernardo do Campo, São Paulo, Brazil) databases. The proposed measure is tested under conditions of Gaussian noise; simulation results show that the proposed FSM outperforms the well-known SSIM and FSIM approaches in its efficiency of similarity detection and recognition of human faces.
topic face recognition
structural similarity measure
feature similarity measure
edge detection
Gaussian noise
url https://www.mdpi.com/2076-3417/7/8/786
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