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A Comparative Analysis of Deep and Shallow Features for Multimodal Face Recognition in a Novel RGB-D-IR Dataset

机译:新型RGB-D-IR数据集中多模式人脸识别深度特征和深度特征的比较分析

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With new trends like 3D and deep learning alternatives for face recognition becoming more popular, it becomes essential to establish a complete benchmark for the evaluation of such algorithms, in a wide variety of data sources and non-ideal scenarios. We propose a new RGB-depth-infrared (RGB-D-IR) dataset, RealFace, acquired with the novel Intel® RealSense collection of sensors, and characterized by multiple variations in pose, lighting and disguise. As baseline for future works, we assess the performance of multiple deep and "shallow" feature descriptors. We conclude that our dataset presents some relevant challenges and that deep feature descriptors present both higher robustness in RGB images, as well as an interesting margin for improvement in alternative sources, such as depth and IR.
机译:随着诸如人脸识别的3D和深度学习替代之类的新趋势变得越来越流行,在各种数据源和非理想情况下,建立评估此类算法的完整基准变得至关重要。我们提出了一个新的RGB深度红外(RGB-D-IR)数据集RealFace,该数据集是通过新颖的Intel®RealSense传感器集合获得的,其特征是姿势,照明和伪装具有多种变化。作为未来工作的基准,我们评估了多个深度和“浅”特征描述符的性能。我们得出的结论是,我们的数据集提出了一些相关的挑战,而深层特征描述符既呈现了RGB图像中更高的鲁棒性,又呈现出了改善深度和IR等替代来源的有趣余量。

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