An Improved Siamese Network for Face Sketch Recognition

Liang Fan, Han Liu, Y. Hou
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引用次数: 3

Abstract

Face sketch recognition identifies the face photo from a large face sketch dataset. Some traditional methods are typically used to reduce the modality gap between face photos and sketches and gain excellent recognition rate based on a pseudo image which is synthesized using the corresponded face photo. However, these methods cannot obtain better high recognition rate for all face sketch datasets, because the use of extracted features cannot lead to the elimination of the effect of different modalities' images. The feature representation of the deep convolutional neural networks as a feasible approach for identification involves wider applications than other methods. It is adapted to extract the features which eliminate the difference between face photos and sketches. The recognition rate is high for neural networks constructed by learning optimal local features, even if the input image shows geometric distortions. However, the case of overfitting leads to the unsatisfactory performance of deep learning methods on face sketch recognition tasks. Also, the sketch images are too simple to be used for extracting effective features. This paper aims to increase the matching rate using the Siamese convolution network architecture. The framework is used to extract useful features from each image pair to reduce the modality gap. Moreover, data augmentation is used to avoid overfitting. We explore the performance of three loss functions and compare the similarity between each image pair. The experimental results show that our framework is adequate for a composite sketch dataset. In addition, it reduces the influence of overfitting by using data augmentation and modifying the network structure.
一种改进的Siamese网络用于人脸素描识别
人脸素描识别从大型人脸素描数据集中识别人脸照片。传统方法主要是利用人脸照片合成的伪图像来减小人脸照片与草图之间的模态差距,从而获得较好的识别率。然而,这些方法并不能对所有的人脸草图数据集获得更好的高识别率,因为提取的特征的使用并不能消除不同模态图像的影响。深度卷积神经网络的特征表示作为一种可行的识别方法有着比其他方法更广泛的应用。它适用于提取特征,消除人脸照片和草图之间的差异。通过学习最优局部特征构建的神经网络,即使输入图像显示几何畸变,识别率也很高。然而,过度拟合的情况导致深度学习方法在人脸草图识别任务上的性能不理想。此外,草图图像过于简单,无法用于提取有效的特征。本文旨在利用Siamese卷积网络架构来提高匹配率。该框架用于从每个图像对中提取有用的特征,以减小模态差距。此外,使用数据增强来避免过拟合。我们探讨了三种损失函数的性能,并比较了每个图像对之间的相似度。实验结果表明,该框架适用于复合草图数据集。此外,通过数据扩充和网络结构的修改,降低了过拟合的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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