论文标题
生物识别验证的几个学习学习
Few-Shot Learning for Biometric Verification
论文作者
论文摘要
在机器学习应用程序中,常见的做法是尽可能多地提供信息。在大多数情况下,该模型可以处理允许更准确预测的大数据集。在存在数据稀缺的情况下,几次学习(FSL)方法旨在通过有限的培训数据来构建更准确的算法。我们提出了一种新颖的端到端轻质体系结构,该体系结构通过与最先进的精度相比,通过几乎没有拍摄的学习方法来验证生物识别数据。密集的层增加了最先进的深度学习模型的复杂性,这些模型抑制了它们用于低功率应用。 In presented approach, a shallow network is coupled with a conventional machine learning technique that exploits hand-crafted features to verify biometric images from multi-modal sources such as signatures, periocular region, iris, face, fingerprints etc. We introduce a self-estimated threshold that strictly monitors False Acceptance Rate (FAR) while generalizing its results hence eliminating user-defined thresholds from ROC curves that are likely在本地数据分布上有偏见。这种混合模型受益于几乎没有学习的学习,从而弥补了生物识别用例中数据稀缺。我们已经通过常用的生物识别数据集进行了广泛的实验。获得的结果为生物识别验证系统提供了有效的解决方案。
In machine learning applications, it is common practice to feed as much information as possible. In most cases, the model can handle large data sets that allow to predict more accurately. In the presence of data scarcity, a Few-Shot learning (FSL) approach aims to build more accurate algorithms with limited training data. We propose a novel end-to-end lightweight architecture that verifies biometric data by producing competitive results as compared to state-of-the-art accuracies through Few-Shot learning methods. The dense layers add to the complexity of state-of-the-art deep learning models which inhibits them to be used in low-power applications. In presented approach, a shallow network is coupled with a conventional machine learning technique that exploits hand-crafted features to verify biometric images from multi-modal sources such as signatures, periocular region, iris, face, fingerprints etc. We introduce a self-estimated threshold that strictly monitors False Acceptance Rate (FAR) while generalizing its results hence eliminating user-defined thresholds from ROC curves that are likely to be biased on local data distribution. This hybrid model benefits from few-shot learning to make up for scarcity of data in biometric use-cases. We have conducted extensive experimentation with commonly used biometric datasets. The obtained results provided an effective solution for biometric verification systems.