kinship verification
Kinship Verification through a Forest Neural Network
Nazari, Ali, Moghaddam, Mohsen Ebrahimi, Borzoei, Omidreza
Early methods used face representations in kinship verification, which are less accurate than joint representations of parents' and children's facial images learned from scratch. We propose an approach featuring graph neural network concepts to utilize face representations and have comparable results to joint representation algorithms. Moreover, we designed the structure of the classification module and introduced a new combination of losses to engage the center loss gradually in training our network. Additionally, we conducted experiments on KinFaceW-I and II, demonstrating the effectiveness of our approach. We achieved the best result on KinFaceW-II, an average improvement of nearly 1.6 for all kinship types, and we were near the best on KinFaceW-I. The code is available at https://github.com/ali-nazari/Kinship-Verification
- Europe > United Kingdom > England > Greater London > London (0.04)
- Asia > Middle East > Iran > Tehran Province > Tehran (0.04)
- Europe > Netherlands > North Holland > Amsterdam (0.04)
Audio-based Kinship Verification Using Age Domain Conversion
Sun, Qiyang, Akman, Alican, Jing, Xin, Milling, Manuel, Schuller, Björn W.
Audio-based kinship verification (AKV) is important in many domains, such as home security monitoring, forensic identification, and social network analysis. A key challenge in the task arises from differences in age across samples from different individuals, which can be interpreted as a domain bias in a cross-domain verification task. To address this issue, we design the notion of an "age-standardised domain" wherein we utilise the optimised CycleGAN-VC3 network to perform age-audio conversion to generate the in-domain audio. The generated audio dataset is employed to extract a range of features, which are then fed into a metric learning architecture to verify kinship. Experiments are conducted on the KAN_AV audio dataset, which contains age and kinship labels. The results demonstrate that the method markedly enhances the accuracy of kinship verification, while also offering novel insights for future kinship verification research.
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.05)
- Europe > United Kingdom > England > Greater London > London (0.04)
- Europe > Denmark > Capital Region > Copenhagen (0.04)
- Asia > India (0.04)
A new method color MS-BSIF Features learning for the robust kinship verification
Aliradi, Rachid, Ouamane, Abdealmalik, Amrane, Abdeslam
the paper presents a new method color MS-BSIF learning and MS-LBP for the kinship verification is the machine's ability to identify the genetic and blood the relationship and its degree between the facial images of humans. Facial verification of kinship refers to the task of training a machine to recognize the blood relationship between a pair of faces parent and non-parent (verification) based on features extracted from facial images, and determining the exact type or degree of this genetic relationship. We use the LBP and color BSIF learning features for the comparison and the TXQDA method for dimensionality reduction and data classification. We let's test the kinship facial verification application is namely the kinface Cornell database. This system improves the robustness of learning while controlling efficiency. The experimental results obtained and compared to other methods have proven the reliability of our framework and surpass the performance of other state-of-the-art techniques.
- Africa > Middle East > Algeria > Algiers Province > Algiers (0.05)
- North America > United States > New York > New York County > New York City (0.04)
Fusion of Deep and Shallow Features for Face Kinship Verification
Ouanas, Belabbaci El, Mohammed, Khammari, Ammar, Chouchane, Bessaoudi, Mohcene, Ouamane, Abdelmalik, Gharbi, Akram Abderraouf
Retinex (MSR), which enhances image quality. MSIDA typically performs the projection of the input region tensor into a novel multilinear The objective of kinship verification from face images is to subspace, which results in an increased distance between ascertain the biological relationship between two individuals samples belonging to different classes and a decreased distance by analyzing their faces appearances [1].
- Europe > Middle East > Malta > Eastern Region > Northern Harbour District > Msida (0.25)
- Africa > Middle East > Algeria > Béjaïa Province > Béjaïa (0.06)
- Africa > Middle East > Algeria > Biskra Province > Biskra (0.06)
Group Membership Prediction
Zhang, Ziming, Chen, Yuting, Saligrama, Venkatesh
The group membership prediction (GMP) problem involves predicting whether or not a collection of instances share a certain semantic property. For instance, in kinship verification given a collection of images, the goal is to predict whether or not they share a {\it familial} relationship. In this context we propose a novel probability model and introduce latent {\em view-specific} and {\em view-shared} random variables to jointly account for the view-specific appearance and cross-view similarities among data instances. Our model posits that data from each view is independent conditioned on the shared variables. This postulate leads to a parametric probability model that decomposes group membership likelihood into a tensor product of data-independent parameters and data-dependent factors. We propose learning the data-independent parameters in a discriminative way with bilinear classifiers, and test our prediction algorithm on challenging visual recognition tasks such as multi-camera person re-identification and kinship verification. On most benchmark datasets, our method can significantly outperform the current state-of-the-art.
Kinship Verification Through Transfer Learning
Xia, Siyu (Southeast University and State University of New York at Buffalo) | Shao, Ming (State University of New York at Buffalo) | Fu, Yun (State University of New York at Buffalo)
Because of the inevitable impact factors such as pose, expression, lighting and aging on faces, identity verification through faces is still an unsolved problem. Research on biometrics raises an even challenging problem — is it possible to determine the kinship merely based on face images? A critical observation that faces of parents captured while they were young are more alike their children's compared with images captured when they are old has been revealed by genetics studies. This enlightens us the following research. First, a new kinship database named UB KinFace composed of child, young parent and old parent face images is collected from Internet. Second, an extended transfer subspace learning method is proposed aiming at mitigating the enormous divergence of distributions between children and old parents. The key idea is to utilize an intermediate distribution close to both the source and target distributions to bridge them and reduce the divergence. Naturally the young parent set is suitable for this task. Through this learning process, the large gap between distributions can be significantly reduced and kinship verification problem becomes more discriminative. Experimental results show that our hypothesis on the role of young parents is valid and transfer learning is effective to enhance the verification accuracy.
- Asia > China (0.04)
- North America > United States > New York (0.04)
- North America > United States > Massachusetts > Hampshire County > Amherst (0.04)