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基于Floatboost算法的人眼定位
引用本文:李维军,吴乐华,郭雨,唐鉴波.基于Floatboost算法的人眼定位[J].无线电通信技术,2014,40(5):47-50.
作者姓名:李维军  吴乐华  郭雨  唐鉴波
作者单位:重庆通信学院,重庆,400035
基金项目:重庆高校创新团队建设计划资助
摘    要:Floatboost算法相较于传统的Adaboost算法、Boosting算法具有计算量少和运算速度快的优点,目前在机器学习中应用广泛。针对人脸与人眼精确定位问题,采用Haar-like提取人脸特征,再运用Floatboost学习算法得到人脸检测器,在人脸准确定位的基础上使用Floatboost训练的人眼分类器定位人眼。Floatboost算法具备回溯性的优点,去掉了较弱特征,减少计算量,提升了运算速度。

关 键 词:Haar-like特征提取  Floatboost算法  人脸检测  人眼定位

Eye Location Based on Floatboost Algorithm
LI Wei-jun,WU Le-hua,GUO Yu,TANG Jian-bo.Eye Location Based on Floatboost Algorithm[J].Radio Communications Technology,2014,40(5):47-50.
Authors:LI Wei-jun  WU Le-hua  GUO Yu  TANG Jian-bo
Affiliation:( Chongqing Communication Institute, Chongqing 400035, China)
Abstract:Compared with the traditional Adaboost algorithm and Boosting algorithm, Floatboost algorithm has such features as lowcomputational complexity and high operational speed,and now it is widely used in machine learning.ln this paper,aiming at face and eyepinpoint,the face feature extraction is implemented by using Haar-like,a face detector is obtained by using Floatboost learning algorithm,andthe eye classification implements eye location by using Floatboost training based on face accurate location. Floatboost algorithm has theadvantage retrospection ,which removes the weaker features ,reduces computational complexity and enhances operational speed.
Keywords:Haar-like feature extraction  floatboost algorithm  face detection  eyes location
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