重庆师范大学计算机与信息科学学院
纸质出版:2023
移动端阅览
[1]张鑫坤,范永胜.基于径向基网络的无监督亲子关系验证[J].新疆大学学报(自然科学版)(中英文),2023,40(04):453-460.
[1]张鑫坤,范永胜.基于径向基网络的无监督亲子关系验证[J].新疆大学学报(自然科学版)(中英文),2023,40(04):453-460. DOI: 10.13568/j.cnki.651094.651316.2023.02.22.0001.
DOI:10.13568/j.cnki.651094.651316.2023.02.22.0001.
亲子关系验证旨在通过给定的两张图像判断其是否具有亲子关系,该问题在机器视觉领域日益受到人们的关注.现有的方法将工作重心放在学习更有效的度量、提取更有判别力的特征、选择更好的分类器上,无法较好地解决成对图像之间差异大的问题.提出了基于径向基网络(RBFN)的无监督分类方法,该方法首先将图像进行聚类,然后将聚类中心点作为径向基核函数的中心点,利用RBFN在成对图像之间建立多变量插值函数,为了使函数逼近的效果更好,将RBFN的输出与子女方图像计算损失并将损失反向传播,不断优化网络模型,最后根据阈值完成分类.算法在公共数据集KinFaceW和UB KinFace上进行了5折交叉验证,结果充分证明了所提方法的有效性及对样本间差异的适应性,为后续亲子关系验证研究提供参考.
Kinship verification aims to verify whether kinship exists in the given two images. The previous methods focus on feature extraction or selecting better classifiers
yet they can not handle the barrier of huge difference between paired images. This paper proposed an unsupervised classification method based on radial basis function network(RBFN)
which firstly clustered the image
and then took the cluster center points as the center points of the radial basis function
then used the RBFN to establish a multivariable interpolation function between the pair images. In order to make the function approximation better
the output of RBFN is used to calculate the MSE loss with the children's images
and the loss is back-propagated to continuously optimize the network model
finally completed the classification according to the threshold. 5-Fold cross validation experiments on two publicly available kinship datasets Kin FaceW and UB KinFace demonstrate the effectiveness of our proposed method and its adaptability to the differences.
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