Image-based Kinship Verification using Fusion Convolutional Neural Network

R. F. Rachmadi, I. Purnama, S. M. S. Nugroho, Y. Suprapto
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引用次数: 4

Abstract

In this paper, we investigate the performance of fusion convolutional neural network (CNN) classifier for image-based kinship verification problem. Two fusion configurations were used for the experiments, early fusion CNN classifier and late fusion CNN classifier. The early fusion configuration of the CNN classifier takes combined two face images as input for verification. The advantages of early fusion configuration are no heavy changes in the classifier architecture and only the first layer that have a different filter size. The late fusion configuration of the CNN classifier formed by creating dual CNN network for extracting the deep features of each face image and classify the kinship relationship using two fully-connected layers. The softmax and angular softmax (a-softmax) loss are used for evaluating the network in the training process with fine-tuning strategy. The classifier then evaluated using large-scale FIW (Family in the Wild) kinship verification dataset consists of 1,000 family and 11 different kinship relationship. Experiments using the 5-fold configuration on FIW dataset show that the ensemble of fusion CNN classifier produces comparable performance with several different state-of-the-art methods.
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基于图像的融合卷积神经网络亲属关系验证
本文研究了融合卷积神经网络(CNN)分类器在基于图像的亲属关系验证问题中的性能。实验采用了两种融合配置,早期融合CNN分类器和后期融合CNN分类器。CNN分类器的早期融合配置是将合并后的两张人脸图像作为输入进行验证。早期融合配置的优点是对分类器架构没有很大的改变,只有第一层具有不同的过滤器大小。通过创建双CNN网络,提取每张人脸图像的深层特征,并使用两个全连接层对亲属关系进行分类,形成CNN分类器的后期融合配置。在训练过程中使用softmax和角softmax (a-softmax)损失来评估网络,并采用微调策略。然后使用大型FIW (Family in Wild)亲属关系验证数据集对分类器进行评估,该数据集由1000个家庭和11种不同的亲属关系组成。在FIW数据集上使用5倍配置的实验表明,融合CNN分类器的集成与几种不同的最先进的方法产生相当的性能。
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