面向倾斜人脸正面化的多阶段统计纹理引导GAN

IF 13.7
Kangli Zeng;Zhongyuan Wang;Tao Lu;Jianyu Chen;Chao Liang;Zhen Han
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引用次数: 0

摘要

现有的姿态不变人脸识别主要集中在正面或侧面,而在监控视频中普遍存在的高俯角人脸识别尚未得到研究。更重要的是,由于自遮挡,倾斜人脸在潜在特征空间上与正面或侧面人脸存在显著差异,严重影响人脸识别的关键特征提取。在本文中,我们将具有挑战性的高俯仰角人脸渐近重塑为一系列小角度近似正面人脸,并利用统计方法学习纹理特征,以确保准确的人脸成分生成。特别地,我们设计了一种统计纹理引导的倾斜面前化GAN (STG-GAN),由三个主要组件组成。首先,人脸编码器提取浅特征,然后是人脸统计纹理建模模块,该模块根据浅特征的统计分布学习多尺度人脸纹理特征。然后,人脸解码器在人脸统计纹理特征的引导下进行特征变形,同时突出显示姿态不变的人脸判别信息。在多尺度内容损失、身份损失和对抗损失的基础上,进一步发展了潜在空间特征的姿态对比损失,以约束姿态一致性,使其人脸正面化过程更加可靠。在此基础上,我们提出了分而治之的策略,利用STG-GAN分阶段逐步合成小俯仰角的人脸,逐步实现正面化。跨多个阶段的统一的端到端训练有助于生成大量的中间结果,以实现对基础真值的合理逼近。在多面数据集上进行的大量定性和定量实验证明了我们方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Stage Statistical Texture-Guided GAN for Tilted Face Frontalization
Existing pose-invariant face recognition mainly focuses on frontal or profile, whereas high-pitch angle face recognition, prevalent under surveillance videos, has yet to be investigated. More importantly, tilted faces significantly differ from frontal or profile faces in the potential feature space due to self-occlusion, thus seriously affecting key feature extraction for face recognition. In this paper, we asymptotically reshape challenging high-pitch angle faces into a series of small-angle approximate frontal faces and exploit a statistical approach to learn texture features to ensure accurate facial component generation. In particular, we design a statistical texture-guided GAN for tilted face frontalization (STG-GAN) consisting of three main components. First, the face encoder extracts shallow features, followed by the face statistical texture modeling module that learns multi-scale face texture features based on the statistical distributions of the shallow features. Then, the face decoder performs feature deformation guided by the face statistical texture features while highlighting the pose-invariant face discriminative information. With the addition of multi-scale content loss, identity loss and adversarial loss, we further develop a pose contrastive loss of potential spatial features to constrain pose consistency and make its face frontalization process more reliable. On this basis, we propose a divide-and-conquer strategy, using STG-GAN to progressively synthesize faces with small pitch angles in multiple stages to achieve frontalization gradually. A unified end-to-end training across multiple stages facilitates the generation of numerous intermediate results to achieve a reasonable approximation of the ground truth. Extensive qualitative and quantitative experiments on multiple-face datasets demonstrate the superiority of our approach.
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