PVSNet:通过学习强制领域特定特征,使用三重损失和自适应硬挖掘训练的手掌静脉认证连体网络

Daksh Thapar, Gaurav Jaswal, A. Nigam, Vivek Kanhangad
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引用次数: 41

摘要

设计一个端到端的深度学习网络来匹配生物特征和有限的训练样本是一项极具挑战性的任务。为了解决这个问题,我们提出了一种设计端到端深度CNN框架的新方法,即PVSNet,它分为两个主要步骤:首先,使用编码器-解码器网络来学习生成的特定领域特征,然后使用Siamese网络,其中卷积层以无监督的方式作为自动编码器进行预训练。所提出的模型通过三重损失函数进行训练,该函数经过调整以学习特征嵌入,以最小化来自同一主题的嵌入对之间的距离,并在一定范围内最大化来自不同主题的嵌入对之间的距离。特别提出了一种基于自适应边际的硬负挖掘的三重连体匹配网络。与训练策略相关的超参数,如自适应裕度,已经被调整,使学习在生物特征数据集上更有效。在广泛的实验中,所提出的网络在三种典型的静脉数据集上优于大多数现有的深度学习解决方案,这清楚地证明了我们所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PVSNet: Palm Vein Authentication Siamese Network Trained using Triplet Loss and Adaptive Hard Mining by Learning Enforced Domain Specific Features
Designing an end-to-end deep learning network to match the biometric features with limited training samples is an extremely challenging task. To address this problem, we propose a new way to design an end-to-end deep CNN framework i.e., PVSNet that works in two major steps: first, an encoder-decoder network is used to learn generative domain-specific features followed by a Siamese network in which convolutional layers are pre-trained in an unsupervised fashion as an autoencoder. The proposed model is trained via triplet loss function that is adjusted for learning feature embeddings in a way that minimizes the distance between embedding-pairs from the same subject and maximizes the distance with those from different subjects, with a margin. In particular, a triplet Siamese matching network using an adaptive margin based hard negative mining has been suggested. The hyper-parameters associated with the training strategy, like the adaptive margin, have been tuned to make the learning more effective on biometric datasets. In extensive experimentation, the proposed network outperforms most of the existing deep learning solutions on three type of typical vein datasets which clearly demonstrates the effectiveness of our proposed method.
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