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Multimodal facial biometrics recognition: Dual-stream convolutional neural networks with multi-feature fusion layers

机译:多模式面部生物识别:双流卷积神经网络,具有多种融合层

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摘要

Facial recognition for surveillance applications still remains challenging in uncontrolled environments, especially with the appearances of masks/veils and different ethnicities effects. Multimodal facial biometrics recognition becomes one of the major studies to overcome such scenarios. However, to cooperate with multimodal facial biometrics, many existing deep learning networks rely on feature concatenation or weight combination to construct a representation layer to perform its desired recognition task. This concatenation is often inefficient, as it does not effectively cooperate with the multimodal data to improve on recognition performance. Therefore, this paper proposes using multi-feature fusion layers for multi modal facial biometrics, thereby leading to significant and informative data learning in dual-stream convolutional neural networks. Specifically, this network consists of two progressive parts with distinct fusion strategies to aggregate RGB data and texture descriptors for multimodal facial biometrics. We demonstrate that the proposed network offers a discriminative feature representation and benefits from the multi-feature fusion layers for an accuracy-performance gain. We also introduce and share a new dataset for multimodal facial biometric data, namely the Ethnic-facial dataset for benchmarking. In addition, four publicly accessible datasets, namely AR. FaceScrub, IMDB_WIKI, and YouTube Face datasets are used to evaluate the proposed network. Through our experimental analysis, the proposed network outperformed several competing networks on these datasets for both recognition and verification tasks. (C) 2020 Elsevier B.V. All rights reserved.
机译:对监测应用的面部识别仍然在不受控制的环境中仍然具有挑战性,特别是对于面具/面纱的外表和不同的种族影响。多峰面部生物识别成为克服这种情况的主要研究之一。然而,为了与多模式面部生物识别性合作,许多现有的深度学习网络依赖于特征级联或重量组合来构建表示层以执行其期望的识别任务。这种连接往往效率低下,因为它没有有效地与多模式数据合作以提高识别性能。因此,本文提出了用于多种模式融合层的多特征融合层,从而导致双流卷积神经网络中的显着和信息丰富的数据学习。具体而言,该网络由两个具有不同融合策略的渐进部分组成,用于聚合RGB数据和用于多模式面部生物识别器的纹理描述符。我们展示所提出的网络提供了来自多特征融合层的鉴别特征表示和优势,以获得精度性能增益。我们还介绍并共享用于多模式面部生物识别数据的新数据集,即用于基准的种族面部数据集。此外,还有四个公开可访问的数据集,即AR。 Facescrub,IMDB_WIKI和YouTube面部数据集用于评估所提出的网络。通过我们的实验分析,所提出的网络在这些数据集上表现出几个竞争网络,用于识别和验证任务。 (c)2020 Elsevier B.v.保留所有权利。

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