端到端热谱人脸验证的数据和算法

Thirimachos Bourlai;Jacob Rose;Suha Reddy Mokalla;Ananya Zabin;Lawrence Hornak;Christopher B. Nalty;Neehar Peri;Joshua Gleason;Carlos D. Castillo;Vishal M. Patel;Rama Chellappa
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引用次数: 0

摘要

尽管深度卷积神经网络(DCNN)最近取得了进展,但低照度和夜间人脸验证仍具有挑战性。虽然最先进的可见光谱人脸验证方法对光照的微小变化具有鲁棒性,但在低光照条件下,很难提取出准确验证所需的鉴别特征。与此相反,捕捉人体热辐射的热人脸图像可以捕捉到不受光照条件影响的面部特征,从而实现低光照或夜间识别性能。然而,由于获取各种热光谱数据的成本和难度增加,直接在小型热光谱数据集上训练人脸验证系统会导致验证性能低下。本文提出了一种基于合成的算法,可将热谱人脸图像适配到可见光谱,使我们无需微调即可重新使用现成的可见光谱特征提取器。我们提出的方法在 ARL-VTF 数据集上实现了最先进的性能。重要的是,我们研究了人脸对齐、像素级对应、带标签平滑的身份分类以及合成数据增强对多光谱人脸合成和验证的影响。结果表明,我们提出的方法在 ARL-VTF 数据集上具有广泛的适用性、鲁棒性和高效性。最后,我们介绍了 MILAB-VTF(B),这是一个多距离、无约束的热可见光数据集。据我们所知,这是在现实条件下收集的同类数据集中规模最大、种类最多的一个。我们的研究表明,我们的端到端热可见光人脸验证系统是 MILAB-VTF(B) 数据集的有力基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data and Algorithms for End-to-End Thermal Spectrum Face Verification
Despite recent advances in deep convolutional neural networks (DCNNs), low-light and nighttime face verification remains challenging. Although state-of-the-art visible-spectrum face verification methods are robust to small changes in illumination, low-light conditions make it difficult to extract discriminative features required for accurate authentication. In contrast, thermal face imagery, which captures body heat emissions, captures discriminative facial features that are invariant to lighting conditions, enabling low-light or nighttime recognition performance. However, due to the increased cost and difficulty of obtaining diverse thermal-spectrum data, directly training face verification systems on small thermal-spectrum datasets results in poor verification performance. This paper presents a synthesis-based algorithm that adapts thermal spectrum face images to the visible spectrum, allowing us to repurpose off-the-shelf visible-spectrum feature extractors without fine-tuning. Our proposed approach achieves state-of-the-art performance on the ARL-VTF dataset. Importantly, we study the impact of face alignment, pixel-level correspondence, identity classification with label smoothing, and synthetic data augmentation for multi-spectral face synthesis and verification. We show that our proposed method is widely applicable, robust, and highly effective on the ARL-VTF dataset. Finally, we present MILAB-VTF(B), a multi-distance, unconstrained thermal-visible dataset. To the best of our knowledge, it is the largest, most diverse dataset of its kind, collected in realistic conditions. We show that our end-to-end thermal-to-visible face verification system serves as a strong baseline for the MILAB-VTF(B) dataset.
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