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Real-time Gender Classification

机译:实时性别分类

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摘要

This paper introduces an automatic real-time gender classification system. The system consists of mainly three modules, face detection, normalization and gender classification. The LUT-type weak classifier based Adaboost learning method is proposed for training both face detector and gender classifier, and a Simple Direct Appearance Model (SDAM) based method is developed to detect the facial landmark points for face normalization. This results in an integrated system with rather good performance. Experiment results on both pictures from World Wide Web and real-time video clips are reported to demonstrate its effectiveness and robustness.
机译:本文介绍了一种自动实时性别分类系统。该系统主要由三个模块组成,分别是人脸检测,标准化和性别分类。提出了一种基于LUT型弱分类器的Adaboost学习方法来训练人脸检测器和性别分类器,并开发了一种基于简单直接外观模型(SDAM)的方法来检测人脸标志点进行人脸归一化。这导致具有相当好的性能的集成系统。报道了来自万维网图片和实时视频剪辑的实验结果,以证明其有效性和鲁棒性。

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