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Towards Efficient Masked-Face Alignment Via Cascaded Regression

机译:通过级联回归朝向有效的掩蔽脸对齐

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Practical and efficient face alignment has been highly required and widely focused in recent years, especially under the trend of edge computation and real-time operation. And it is a critical need to deal with masked faces in the context of COVID-19 epidemic. In this paper, we propose a novel cascaded facial landmark detector towards efficient masked face alignment, which we call QCN (Quantized Cascaded Network). QCN consists of three stages: alignment, estimation and refinement. The alignment stage help to pre-align the faces to alleviate extreme poses. And the next two stages localize facial landmarks in a coarse-to-fine manner. Thanks to the Network Architecture Search and Quantization techniques, the networks of QCN are designed as efficient as possible. Specifically, QCN occupies 1.75 Mb storage and runs in 84.18 MFLOPs only. Despite costs little computations, the proposed method yields 62.62% AUC (@0.08) on test set of JD-landmark-mask, which achieves 2nd place in the Grand Challenge of 106-point Facial Landmark Localization in ICME2021.
机译:近年来,实用和高效的面部对准是非常需要的,并且广泛聚焦,特别是在边缘计算和实时操作的趋势下。在Covid-19流行病的背景下,这是处理蒙面面孔的危急。在本文中,我们提出了一种新型级联面部地标检测器,朝向有效的屏蔽面向对准,我们呼叫QCN(量化的级联网络)。 QCN由三个阶段组成:对齐,估计和细化。对准阶段有助于预先调整面部以缓解极端姿势。接下来的两个阶段以粗糙的方式本地化面部地标。由于网络架构搜索和量化技术,QCN网络尽可能高效地设计。具体而言,QCN仅占用1.75 MB存储,仅在84.18 MFLOPS中运行。尽管计算了几乎没有计算,所提出的方法在JD-Lordmark-Mask的测试组中产生62.62%AUC(@ 0.08),其在ICME2021中的106分面部地标定位的大挑战中实现了第2位。

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