动态三箱真实AdaBoost使用有偏差分类器:在人脸检测中的应用

R. Abiantun, M. Savvides
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引用次数: 1

摘要

在本文中,我们简要地回顾了AdaBoost,并通过从一对有偏见的分类器中构建弱分类器来扩展离散版本,使弱分类器能够避免对某些样本进行分类。我们表明,这种方法变成了一个3-bin的Real AdaBoost方法,其中bin的大小和位置由用户选择的偏差参数设置,并随着每次迭代而动态变化,使其与传统的Real AdaBoost不同。我们将该方法应用于人脸检测,更具体地说,Viola-Jones方法用于检测具有haar样特征的人脸,并通过经验表明,我们的方法可以通过减少最终分类器的测试误差来帮助提高泛化能力。我们在MIT+CMU数据库上对结果进行了基准测试。
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Dynamic three-bin real AdaBoost using biased classifiers: An application in face detection
In this paper, we briefly review AdaBoost and expand on the Discrete version by building weak classifiers from a pair of biased classifiers which enable the weak classifier to abstain from classifying some samples. We show that this approach turns into a 3-bin Real AdaBoost approach where the bin sizes and positions are set by the bias parameters selected by the user and dynamically change with every iteration which make it different from the traditional Real AdaBoost. We apply this method to face detection more specifically the Viola-Jones approach to detecting faces with Haar-like features and empirically show that our method can help improving the generalization ability by reducing the testing error of the final classifier. We benchmark the results on the MIT+CMU database.
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