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Open AccessJournal ArticleDOI

Hierarchical Representation Learning for Kinship Verification

TLDR
In this paper, a hierarchical kinship verification via representation learning (KVRL) framework is utilized to learn the representation of different face regions in an unsupervised manner, and a compact representation of facial images of kin is extracted as an output from the learned model and a multi-layer neural network is employed to verify the kin accurately.
Abstract: 
Kinship verification has a number of applications such as organizing large collections of images and recognizing resemblances among humans. In this paper, first, a human study is conducted to understand the capabilities of human mind and to identify the discriminatory areas of a face that facilitate kinship-cues. The visual stimuli presented to the participants determine their ability to recognize kin relationship using the whole face as well as specific facial regions. The effect of participant gender and age and kin-relation pair of the stimulus is analyzed using quantitative measures such as accuracy, discriminability index $d'$ , and perceptual information entropy. Utilizing the information obtained from the human study, a hierarchical kinship verification via representation learning (KVRL) framework is utilized to learn the representation of different face regions in an unsupervised manner. We propose a novel approach for feature representation termed as filtered contractive deep belief networks ( fc DBN). The proposed feature representation encodes relational information present in images using filters and contractive regularization penalty. A compact representation of facial images of kin is extracted as an output from the learned model and a multi-layer neural network is utilized to verify the kin accurately. A new WVU kinship database is created, which consists of multiple images per subject to facilitate kinship verification. The results show that the proposed deep learning framework (KVRL- fc DBN) yields the state-of-the-art kinship verification accuracy on the WVU kinship database and on four existing benchmark data sets. Furthermore, kinship information is used as a soft biometric modality to boost the performance of face verification via product of likelihood ratio and support vector machine based approaches. Using the proposed KVRL- fc DBN framework, an improvement of over 20% is observed in the performance of face verification.

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Citations
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Proceedings ArticleDOI

Face Kinship Verification Based VGG16 and new Gabor Wavelet Features

TL;DR: Huang et al. as discussed by the authors developed an efficient method named Hist-Gabor based on the histogram features extracted from basic Gabor wavelet in order to represent face images with high discriminate power.
Posted Content

Meta-Mining Discriminative Samples for Kinship Verification

TL;DR: Wang et al. as mentioned in this paper proposed a discriminative sample meta-mining (DSMM) approach for kinship verification, which utilizes all possible pairs and automatically learns discriminativity information from data.
Book ChapterDOI

Introduction to Facial Kinship Verification

TL;DR: In this chapter, the background of facial kinship verification is introduced and the state-of-the-art of facial relatives verification is reviewed, to outline the organization of the book.
Proceedings ArticleDOI

Kinship Verification Using Color Features and Covariance Descriptor

TL;DR: A novel way of feature representation is proposed that has been improved compared to other state-of-the-art methods and the effectiveness of the proposed method is measured on two benchmark datasets.
Journal ArticleDOI

A survey on kinship verification

TL;DR: The Nemo-Kinship dataset as discussed by the authors was proposed as a benchmark dataset addressing large inter-subject age variations and consisting of 4216 videos of 248 persons from 85 families.
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