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A classifier training method for face detection based on AdaBoost

机译:基于AdaBoost的人脸检测分类器训练方法

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摘要

in this work, we proposed two novel ideas for improved Adaboost-cascade face detection. Firstly through researching the characteristic of weak classifier, we proposed a method of computing threshold which obtained high detection rate for using fewer weak classifiers. Secondly selecting discriminative weak learners to optimize the detection performance and employing the number of Haar-like features in the Adaboost training. This approach maintains the simplicity of traditional formulation as well as being more discriminative. Mostly it is more efficient and a robust detector with few features. Simulation experiments in most static face detection and a little video face detection system are conducted that including human frontal faces and clutter, our method is superior to conventional AdaBoost in computer efficiency and increase the detection accuracy of the existing classifiers.
机译:在这项工作中,我们提出了两种改进Adaboost级联人脸检测的新颖思路。首先,通过研究弱分类器的特点,提出了一种阈值计算方法,该方法利用较少的弱分类器获得较高的检测率。其次,选择具有歧视性的弱学习者以优化检测性能,并在Adaboost训练中采用类似Haar的特征。这种方法保持了传统配方的简单性,并且更具区分性。通常,它效率更高,功能强大的检测器很少。在大多数静态人脸检测和少量视频人脸检测系统中进行了仿真实验,该系统包括人额脸和杂波,我们的方法在计算机效率方面优于传统的AdaBoost,并提高了现有分类器的检测精度。

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