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Fusing multi-feature representation and PSO-Adaboost based feature selection for reliable frontal face detection

机译:融合多特征表示和基于PSO-Adaboost的特征选择,实现可靠的正面人脸检测

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We propose a reliable frontal face detector based on multifeature descriptors and feature selection using PSO-Adaboost. Utilization of multiple heterogeneous feature descriptors enriches the diversity of feature types for face modeling and feature learning. To speed up the training process of face detector, we also propose a PSO-Adaboost algorithm that replaces exhaustive search used in original Adaboost framework with Particle Swarm Optimization (PSO) technique for efficient feature selection. Finally, a three-stage cascade classifier is developed to remove background rapidly. In particular, an initial stage is designed to detect candidate face regions more quickly by using a large size window with a large moving step. Radial Basis Function (RBF) SVM classifiers are used instead of decision stump functions in the last stage to remove those remaining complex non-face patterns that can not be rejected in the previous two stages. Combining these three effective modules, our face detector achieves a detection rate of 96.50% at ten false positives on the CMU+MIT frontal face dataset.
机译:我们提出了一种可靠的基于多特征描述符和使用PSO-Adaboost进行特征选择的正面人脸检测器。多个异构特征描述符的使用丰富了用于面部建模和特征学习的特征类型的多样性。为了加快人脸检测器的训练过程,我们还提出了一种PSO-Adaboost算法,该算法将原始Adaboost框架中使用的穷举搜索替换为粒子群优化(PSO)技术,以进行有效的特征选择。最后,开发了一种三级级联分类器以快速去除背景。特别地,初始阶段被设计为通过使用具有大移动步幅的大尺寸窗口来更快地检测候选面部区域。在最后阶段,使用径向基函数(RBF)SVM分类器代替决策树桩函数,以除去在前两个阶段中不能拒绝的那些剩余的复杂非人脸模式。结合这三个有效模块,我们的人脸检测器在CMU + MIT正面人脸数据集上出现十个假阳性时,检测率达到96.50%。

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