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Face Recognition in the Dark: A Unified Approach for NIR- VIS and VIS- NIR Face Matching

机译:在黑暗中的人脸识别:必读和Vis-nir脸部匹配的统一方法

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Visible face recognition security systems fail to recognize the faces in total darkness. Near Infrared (NIR) spectrum provides an affordable and effectual method to capture good quality images in poor lighting or complete darkness condition. In this paper, a unified model has been proposed for both NIRVIS and VIS- NIR heterogeneous face recognition to solve the illumination problem. The proposed model is based on transfer learning which is a modified version of the Resnet-34 model and it avoids training on large scale NIR face images. Two experiments have been conducted using the proposed model on publicly available datasets, namely Oulu- CASIA and HITSZ. NIR query images are matched with VIS gallery images whereas, in the second experiment, VIS query images are matched with NIR gallery images. The proposed model has given a rank-l accuracy of 98.54% on the Oulu- CASIA dataset which outperforms the existing state-of-the-art models.
机译:可见面部识别安全系统无法识别完全黑暗中的面部。近红外线(NIR)谱提供了一种实惠且有效的方法,以捕获良好的照明或完全黑暗条件的良好质量图像。本文已经提出了统一的模型,用于NIRVIS和VIRVIS异构面部识别以解决照明问题。该建议的模型基于转移学习,这是Reset-34模型的修改版本,它避免了大规模NIR面部图像的训练。使用了在公共数据集上的拟议模型进行了两次实验,即Oulu-Casia和Hitsz。 NIR查询图像与VIS Gallery Images匹配,而在第二个实验中,VIS查询图像与NIR Gallery Images匹配。拟议的模型在Oulu-Casia数据集上给出了98.54%的秩-L准确性,这胜过现有的最先进的模型。

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