手部静脉识别的跨模态域自适应

Shuqiang Yang, Huafeng Qin, M. El-Yacoubi, Chongwen Liu
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引用次数: 0

摘要

手掌静脉识别在过去几年里引起了越来越多的关注。尽管基于深度学习的方法,如卷积神经网络(CNN),已被证明对特征表示有效,从而在静脉验证任务中取得了良好的性能,但它们通常是在大型标记数据集上训练的。一般来说,标记静脉图像是昂贵和费时的,典型的手动调整数据增强方法无法收集到此类图像中的复杂变化。为了解决这一问题,提出了一种新的无监督域自适应方法——基于cyclegan的域自适应(CGAN-DA),该方法可以在不需要任何图像注释的情况下,从掌静脉网络中自动提取判别式。我们提出的CGAN-DA允许一种学习方案,确保图像和特征适应的协同融合。具体来说,我们在掌静脉图像域和视网膜图像域对图像的外观进行变换,以增强提取的特征在掌静脉分割任务中的域不变性。在不使用目标域(掌静脉图像)的任何注释的情况下,我们的模型学习由几个对抗性损失、一个循环一致性损失和一个分割损失指导。我们在CASIA手掌静脉数据集上的实验表明,我们的方法能够达到最先进的验证精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Modality Domain Adaptation for hand-vein recognition
Palm-vein recognition has attracted increasing attention over the last years. Although deep learning-based approaches, such as Convolutional Neural Networks (CNN), have been shown to be effective for feature representation, thereby achieving good performance in vein verification tasks, they typically are trained on large labeled datasets. In general, labeling vein images is expensive and time cost, and typical hand-tuned approaches for data augmentation can not collect the complex variations in such images. To address this problem, a novel unsupervised domain adaptation approach, named CycleGAN-based domain adaptation (CGAN-DA), is proposed to automatically extract discriminant from the palm-vein network, without the need of any image annotation. Our proposed CGAN-DA allows a learning scheme that ensures a synergistic fusion of adaptations image-wise and feature-wise. Concretely, we transform the image appearance across two domains (palm-vein image domain and retinal image domain), in order to enhance the domain-invariance of the extracted features for the palm-vein segmentation task. Without using any annotation from the target domain (palm-vein images), our model learning is guided by several adversarial losses, a cycle consistence loss and a segmentation loss. Our experimental on the public CASIA palm-vein dataset show that our approach is capable of achieving state-of-the art verification accuracy.
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