首页> 外文期刊>Signal Processing Letters, IEEE >Complexity Reduced Face Detection Using Probability-Based Face Mask Prefiltering and Pixel-Based Hierarchical-Feature Adaboosting
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Complexity Reduced Face Detection Using Probability-Based Face Mask Prefiltering and Pixel-Based Hierarchical-Feature Adaboosting

机译:使用基于概率的面罩预过滤和基于像素的分层特征Adaboosting降低复杂度的人脸检测

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The Adaboosting has attracted attention for its efficient face-detection performance. However, in the training process, the large number of possible Haar-like features in a standard sub-window becomes time consuming, which makes specific environment feature adaptation extremely difficult. This letter presents a two-stage hybrid face detection scheme using Probability-based Face Mask Pre-Filtering (PFMPF) and the Pixel-Based Hierarchical-Feature Adaboosting (PBHFA) method to effectively solve the above-mentioned problems in cascade Ad aboosting. The two stages both provide far less training time than that of the cascade Adaboosting and thus reduce the computation complexity in face-detection tasks. In particular, the proposed PFMPF can effectively filter out more than 85% nonface in an image and the remaining few face candidates are then secondly filtered with a single PBHF Adaboost strong classifier. Given a M × N sub-window, the number of possible PBH features is simplified down to a level less than M × N, which significantly reduces the length of the training period by a factor of 1500. Moreover, when the two-stage hybrid face detection scheme are employed for practical face-detection tasks, the complexity is still lower than that of the integral-image based approach in the traditional Adaboosting method. Experimental results obtained using the gray feret database show that the proposed two-stage hybrid face detection scheme is significantly more effective than Haar-like features.
机译:Adaboosting由于其有效的面部检测性能而引起了人们的关注。然而,在训练过程中,标准子窗口中大量可能的类似Haar的特征变得很耗时,这使得特定环境特征的适应极其困难。这封信提出了一种两阶段混合人脸检测方案,该方案使用基于概率的面罩预过滤(PFMPF)和基于像素的分层特征Adaboosting(PBHFA)方法来有效解决级联广告增强中的上述问题。这两个阶段都提供了比级联Adaboosting更少的训练时间,因此减少了人脸检测任务的计算复杂性。特别是,提出的PFMPF可以有效过滤掉图像中超过85%的非人脸,然后使用单个PBHF Adaboost强分类器对剩余的少数人脸进行第二次过滤。在给定M×N子窗口的情况下,可能的PBH功能的数量将简化到小于M×N的水平,从而将训练周期的长度显着减少了1500倍。此外,两阶段混合时人脸检测方案用于实际的人脸检测任务,其复杂度仍低于传统Adaboosting方法中基于积分图像的方法。使用灰色feret数据库获得的实验结果表明,所提出的两阶段混合人脸检测方案比类似Haar的特征要有效得多。

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