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Adaboost face detector based on Joint Integral Histogram and Genetic Algorithms for feature extraction process

机译:基于联合积分直方图和遗传算法的Adaboost人脸检测器特征提取过程

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摘要

Recently, many classes of objects can be efficiently detected by the way of machine learning techniques. In practice, boosting techniques are among the most widely used machine learning for various reasons. This is mainly due to low false positive rate of the cascade structure offering the possibility to be trained by different classes of object. However, it is especially used for face detection since it is the most popular sub-problem within object detection. The challenges of Adaboost based face detector include the selection of the most relevant features from a large feature set which are considered as weak classifiers. In many scenarios, however, selection of features based on lowering classification errors leads to computation complexity and excess of memory use. In this work, we propose a new method to train an effective detector by discarding redundant weak classifiers while achieving the pre-determined learning objective. To achieve this, on the one hand, we modify AdaBoost training so that the feature selection process is not based any more on the weak learner’s training error. This is by incorporating the Genetic Algorithm (GA) on the training process. On the other hand, we make use of the Joint Integral Histogram in order to extract more powerful features. Experimental performance on human faces show that our proposed method requires smaller number of weak classifiers than the conventional learning algorithm, resulting in higher learning and faster classification rates. So, our method outperforms significantly state-of-the-art cascade methods in terms of detection rate and false positive rate and especially in reducing the number of weak classifiers per stage.
机译:最近,通过机器学习技术可以有效地检测许多类别的对象。实际上,出于各种原因,增强技术是使用最广泛的机器学习之一。这主要是由于级联结构的假阳性率低,提供了由不同类别的对象训练的可能性。但是,由于它是对象检测中最流行的子问题,因此特别用于面部检测。基于Adaboost的面部检测器的挑战包括从大型特征集中选择最相关的特征,这些特征被认为是弱分类器。但是,在许多情况下,基于降低分类错误的特征选择会导致计算复杂性和过多的内存使用。在这项工作中,我们提出了一种在达到预定学习目标的同时,通过丢弃冗余弱分类器来训练有效检测器的新方法。为此,一方面,我们修改了AdaBoost培训,以使功能选择过程不再基于弱学习者的培训错误。这是通过在训练过程中加入遗传算法(GA)来实现的。另一方面,我们利用联合积分直方图来提取更强大的功能。在人脸上的实验性能表明,与传统的学习算法相比,我们提出的方法所需的弱分类器数量更少,从而实现了更高的学习速度和更快的分类速度。因此,在检测率和误报率方面,尤其是在减少每个阶段的弱分类器数量方面,我们的方法明显优于最新的级联方法。

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