Multi-spectral Facial Landmark Detection

Jin Keong, Xingbo Dong, Zhe Jin, Khawla Mallat, J. Dugelay
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引用次数: 5

Abstract

Thermal face image analysis is favorable for certain circumstances. For example, illumination-sensitive applications, like nighttime surveillance; and privacy-preserving demanded access control. However, the inadequate study on thermal face image analysis calls for attention in responding to the industry requirements. Detecting facial landmark points are important for many face analysis tasks, such as face recognition, 3D face reconstruction, and face expression recognition. In this paper, we propose a robust neural network enabled facial landmark detection, namely Deep Multi-Spectral Learning (DMSL). Briefly, DMSL consists of two sub-models, i.e. face boundary detection, and landmark coordinates detection. Such an architecture demonstrates the capability of detecting the facial landmarks on both visible and thermal images. Particularly, the proposed DMSL model is robust in facial landmark detection where the face is partially occluded, or facing different directions. The experiment conducted on Eurecom’s visible and thermal paired database shows the superior performance of DMSL over the state-of-the-art for thermal facial landmark detection. In addition to that, we have annotated a thermal face dataset with their respective facial landmark for the purpose of experimentation.
多光谱人脸特征检测
热人脸图像分析在某些情况下是有利的。例如,照明敏感的应用,如夜间监视;保护隐私需要访问控制。然而,在热人脸图像分析方面的研究不足,需要重视,以满足行业的需求。人脸特征点的检测对于人脸识别、三维人脸重建、人脸表情识别等人脸分析任务具有重要意义。在本文中,我们提出了一种鲁棒神经网络支持的面部地标检测,即深度多光谱学习(DMSL)。简单地说,DMSL包括两个子模型,即人脸边界检测和地标坐标检测。这种结构证明了在可见图像和热图像上检测面部地标的能力。特别是在人脸被部分遮挡或面向不同方向的情况下,所提出的DMSL模型具有较强的鲁棒性。在Eurecom的可见和热配对数据库上进行的实验表明,DMSL在热面部地标检测方面的性能优于最先进的技术。除此之外,我们还用各自的面部地标注释了热人脸数据集,用于实验目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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