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首页> 外文期刊>Journal of electronic imaging >Coupled cascade regression from real and synthesized faces for simultaneous landmark detection and head pose estimation
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Coupled cascade regression from real and synthesized faces for simultaneous landmark detection and head pose estimation

机译:耦合级联回归真实和合成面,同时进行地标检测和头部姿势估计

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摘要

The existing approaches usually perform facial landmark detection and head pose estimation independently and sequentially, ignoring their coupled relations. We introduce a unified framework, named coupled cascade regression (CCR), for simultaneous facial landmark detection and head pose estimation. Based on the cascade regression framework, we propose to learn two separate regressors to update the landmark locations and three-dimensional (3D) face model parameters at each cascade level. To capture the coupled relations of the landmark locations and head pose, we further apply the 3D face projection model to refine the prediction results in each cascade iteration and make them consistent. CCR can leverage both the learning methods and the projection model to simultaneously perform facial landmark detection and pose estimation to enhance the performances of both tasks. We also propose to learn the cascade regressors from the combination of real and synthesized face images to solve the problem of limited variations in head pose for training. Experimental results on Helen, labeled face parts in the wild, 300-W, and Boston University datasets show that our proposed CCR method outperforms other conventional methods both for landmark detection and head pose estimation. (C) 2020 SPIE and IS&T
机译:现有方法通常独立地执行面部地标检测和头部姿势估计,忽略其耦合关系。我们介绍了一个统一的框架,命名耦合级联回归(CCR),用于同时面部地标检测和头部姿势估计。基于级联回归框架,我们建议学习两个单独的回归器,以在每个级联水平上更新地标位置和三维(3D)面部模型参数。为了捕获地标位置和头部姿势的耦合关系,我们进一步应用了3D面投影模型来优化每个级联迭代中的预测结果,使它们保持一致。 CCR可以利用学习方法和投影模型来同时执行面部地标检测和姿势估计,以增强两个任务的性能。我们还建议从真实和合成的面部图像的组合学习级联回归器,以解决训练的头部姿势有限的变化问题。 Helen的实验结果,野外,300-W和波士顿大学数据集的标记面部零件表明,我们所提出的CCR方法优于地标检测和头部姿势估计的其他传统方法。 (c)2020个SPIE和IS&T

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