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Face Detection, Bounding Box Aggregation and Pose Estimation for Robust Facial Landmark Localisation in the Wild

机译:人脸检测,边界框聚合和姿势估计,用于野外鲁棒的人脸地标定位

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We present a framework for robust face detection and landmark localisation of faces in the wild, which has been evaluated as part of 'the 2nd Facial Landmark Localisation Competition'. The framework has four stages: face detection, bounding box aggregation, pose estimation and landmark localisation. To achieve a high detection rate, we use two publicly available CNN-based face detectors and two proprietary detectors. We aggregate the detected face bounding boxes of each input image to reduce false positives and improve face detection accuracy. A cascaded shape regressor, trained using faces with a variety of pose variations, is then employed for pose estimation and image pre-processing. Last, we train the final cascaded shape regressor for fine-grained landmark localisation, using a large number of training samples with limited pose variations. The experimental results obtained on the 300W and Menpo benchmarks demonstrate the superiority of our framework over state-of-the-art methods.
机译:我们提出了一个用于在野外进行鲁棒的人脸检测和地标定位的框架,该框架已作为“第二届面部地标定位比赛”的一部分进行了评估。该框架分为四个阶段:面部检测,边界框聚合,姿势估计和界标定位。为了达到较高的检测率,我们使用了两个可公开使用的基于CNN的面部检测器和两个专有的检测器。我们汇总每个输入图像的检测到的面部边界框,以减少误报并提高面部检测的准确性。然后,使用具有各种姿势变化的面部训练的级联形状回归器进行姿势估计和图像预处理。最后,我们使用大量姿态变化有限的训练样本来训练最终的级联形状回归器,以实现细粒度的地标定位。在300W和Menpo基准上获得的实验结果表明,我们的框架优于最新方法。

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