鲁棒FEC-CNN:一种高精度人脸特征检测系统

Zhenliang He, Jie Zhang, Meina Kan, S. Shan, Xilin Chen
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引用次数: 28

摘要

人脸特征检测作为计算机视觉中一项典型而关键的任务,广泛应用于人脸识别、人脸动画、面部表情分析等领域。在过去的几十年里,许多人致力于设计鲁棒的面部特征检测算法。然而,由于极端的姿势,夸张的面部表情,不受约束的照明等,这仍然是一项具有挑战性的任务。在这项工作中,我们提出了一种有效的面部地标检测系统,记录为鲁棒FEC-CNN (RFC),该系统在野外面部地标检测方面取得了令人印象深刻的结果。考虑到深度卷积神经网络的良好能力,我们采用FEC-CNN作为表征面部从外观到形状的复杂非线性的基本方法。采用人脸边界盒不变性技术降低了对人脸检测器的地标定位灵敏度,同时采用模型集成策略进一步提高了地标定位性能。我们参加了Menpo面部地标定位野外挑战赛,我们的RFC显著优于基线方法APS。在Menpo Challenge数据集和IBUG数据集上的大量实验证明了所提RFC的优越性能。
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Robust FEC-CNN: A High Accuracy Facial Landmark Detection System
Facial landmark detection, as a typical and crucial task in computer vision, is widely used in face recognition, face animation, facial expression analysis, etc. In the past decades, many efforts are devoted to designing robust facial landmark detection algorithms. However, it remains a challenging task due to extreme poses, exaggerated facial expression, unconstrained illumination, etc. In this work, we propose an effective facial landmark detection system, recorded as Robust FEC-CNN (RFC), which achieves impressive results on facial landmark detection in the wild. Considering the favorable ability of deep convolutional neural network, we resort to FEC-CNN as a basic method to characterize the complex nonlinearity from face appearance to shape. Moreover, face bounding box invariant technique is adopted to reduce the landmark localization sensitivity to the face detector while model ensemble strategy is adopted to further enhance the landmark localization performance. We participate the Menpo Facial Landmark Localisation in-the-Wild Challenge and our RFC significantly outperforms the baseline approach APS. Extensive experiments on Menpo Challenge dataset and IBUG dataset demonstrate the superior performance of the proposed RFC.
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