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A Hybrid Model Combining Learning Distance Metric and DAG Support Vector Machine for Multimodal Biometric Recognition

机译:一种混合模型组合学习距离度量和DAG支持向量机的多峰生物识别识别

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摘要

Metric learning has significantly improved machine learning applications such as face re-identification and image classification using K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) classifiers. However, to the best of our knowledge, it has not been investigated yet, especially for the multimodal biometric recognition problem in immigration, forensic and surveillance applications with uncontrolled ear datasets. Therefore, it is interesting and very attractive to propose a novel framework for multimodal biometric recognition based on Learning Distance Metric (LDM) via kernel SVM. This paper considers metric learning for SVM by investigating a hybrid Learning Distance Metric and Directed Acyclic Graph SVM (LDM-DAGSVM) model for multimodal biometric recognition, where LDM and DAGSVM are two emerging techniques in dealing with classification problems. Different from existing multimodal biometric recognition methods, the proposed approach aims to learn Mahalanobis distance metric via kernel SVM to maximize the inter-class variations and minimize the intra-class variations, simultaneously. Experimental results on the uncontrolled datasets such as AR face and AWE ear datasets show that the proposed approach achieves competitive performance compared with models working on individual modalities and overperforms the state-of-the-art multimodal methods. The proposed model achieves five-fold classification accuracy around 99.85 % for the face and ear images.
机译:公制学习具有显着改善的机器学习应用,例如使用K-CORMATE邻(KNN)和支持向量机(SVM)分类器的面部重新识别和图像分类。然而,据我们所知,它尚未调查,特别是对于移民,法医和监视应用中的多模式生物识别问题,具有不受控制的耳朵数据集。因此,基于学习距离度量(LDM)通过内核SVM提出了一种用于多模式生物识别识别的新颖框架是有趣的并且非常有吸引力。本文通过调查用于多模式生物识别识别的混合学习距离度量和针对多级生物识别识别模型来对SVM进行度量学习,其中LDM和DAGSVM是处理分类问题的两个新兴技术。不同于现有的多模式生物识别方法,该方法旨在通过内核SVM学习Mahalanobis距离度量,以最大化阶级的帧间变化,并同时最小化课堂内变化。在AR面和敬畏耳数据集等不受控制的数据集上的实验结果表明,与个人方式的模型相比,该方法实现了竞争性能,并实现了最先进的多数制方法。所提出的模型为面部和耳朵图像达到99.85%的五倍分类精度。

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