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Minimal support based multi-view face detection: Issues and Implementation

机译:基于最少支持的多视图面部检测:问题和实现

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Multi-view face detection is a challenging problem due to dramatic appearance changes under various pose, illumination and expression conditions. In this paper we consider the problem of multi-view face detection. In this paper detection, It propose to apply Deep Convolutional Neural Networks (DCNN) as the post filter, which is known to be able to extract effective features automatically during learning. The proposed method has minimal complexity, unlike other recent deep learning object detection methods, it does not require additional components such as segmentation, bounding box regression, or SVM classifiers. We build a deep convolutional neural network that can simultaneously learn the faceonface decision, the face pose estimation problem, and the facial landmark localization problem. We show that such a multi-task learning scheme can further improve the classifier's accuracy. Evaluations on popular face detection benchmark data sets show that our single model face detector algorithm has similar or better performance compared other previous methods, which are more complex and require annotations of either different poses or facial landmarks.
机译:由于在各种姿势,照明和表情条件下的戏剧性外观变化,多视图面部检测是一个具有挑战性的问题。在本文中,我们考虑了多视图人脸检测的问题。在本文的检测中,它建议应用深度卷积神经网络(DCNN)作为后置滤波器,已知该后置滤波器能够在学习过程中自动提取有效特征。与其他最近的深度学习对象检测方法不同,该方法具有最小的复杂度,它不需要诸如分割,边界框回归或SVM分类器之类的其他组件。我们建立了一个深度卷积神经网络,可以同时学习面部/非面部决策,面部姿势估计问题和面部界标定位问题。我们证明了这种多任务学习方案可以进一步提高分类器的准确性。对流行的面部检测基准数据集的评估表明,与其他以前的方法相比,我们的单模型面部检测器算法具有相似或更好的性能,这些方法更复杂并且需要注释不同的姿势或面部标志。

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