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An Examination of Deep-Learning Based Landmark Detection Methods on Thermal Face Imagery

机译:基于深度学习的地标热图像检测方法的检验

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Thermal-to-visible face recognition is an emerging technology for low-light and nighttime human identification, for which detection of fiducial landmarks is a critical step required for face alignment prior to recognition. However, thermal images with their low contrast, low resolution, and lack of textural information have proven a challenging obstacle for the detection of the fiducial landmarks used for image alignment. This paper analyzes the ability of modern landmark detection algorithms to cope with the adversarial conditions present in the thermal domain by exploring the strengths and weaknesses of three deep-learning based landmark detection architectures originally developed for visible images: the Deep Alignment Network (DAN), Multi-task Convolutional Neural Network (MTCNN), and a Multi-class Patch-based fullyconvolutional neural network (PBC). Our experiments yield a normalized mean squared error of 0.04 at an offset distance of 2.5 meters using the DAN architecture, indicating an ability for cascaded shape regression neural networks to adapt to thermal images. However, we find that even small alignment errors disproportionately reduce correct recognition rates. With images aligned using the best performing model, an 8.2% drop in EER is observed as compared with ground truth alignments, leaving further room for improvement in this area.
机译:从热到可见的面部识别是一种用于微光和夜间人识别的新兴技术,为此,基准点的检测是识别之前面部对齐所需的关键步骤。然而,具有低对比度,低分辨率和缺乏纹理信息的热图像已被证明是检测用于图像对准的基准界标的具有挑战性的障碍。本文通过探索最初针对可见图像开发的三种基于深度学习的地标检测架构的优缺点,分析了现代地标检测算法应对热域中对抗条件的能力:深度对准网络(DAN),多任务卷积神经网络(MTCNN)和基于多类补丁的全卷积神经网络(PBC)。我们的实验使用DAN架构在2.5米的偏移距离处产生了0.04的归一化均方误差,这表明级联形状回归神经网络能够适应热图像。但是,我们发现即使很小的对齐错误也会不成比例地降低正确的识别率。使用性能最佳的模型对图像进行校正后,与地面真实校正相比,可观察到的EER下降了8.2%,从而在此方面还有进一步的改进空间。

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