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基于DM6437的人眼检测算法的设计与实现

Design and Implementation of Adaboost Eye Detection Based on DM6437
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摘要 采用Adaboost人脸检测算法,对输入样本进行Haar特征提取,从中选择出甄别效率最高的Haar特征,然后将训练得到的Haar特征转换为弱分类器,进一步将弱分类器组合成强分类器,通过肤色确定候选点,然后用强分类器进行人脸的检测,进一步利用混合投影峰分析检测人眼的位置。通过C++实现了该算法,完成了人脸检测算法的DSP程序移植。实验结果表明,该DSP系统可以有效的实现人眼检测。 Adaboost face detection algorithm is applied in this practice.Firstly,it extracts the haar features of input samples and chooses optimal Haar features through training and changes it into weak classifer.Then,it makes weak classifier optimized into strong classifier.Candidate points are found by skin color features.Finally,faces are detected by cascade classifier and the location of eyes is detected by Hybrid Projection Peak Analysis.Adaboost face detection algorithm is implemented on C++,and the algorithm is transplanted to DSP.By the results,it is shown that this system on DSP can be used to realize face detection.
出处 《光电子技术》 CAS 北大核心 2014年第2期106-108,112,共4页 Optoelectronic Technology
关键词 肤色 人脸检测 ADABOOST 混合投影峰分析 skin color face detection adaboost hybrid projection peak analysis
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  • 1燕继坤,郑辉,王艳,曾立君.基于可信度的投票法[J].计算机学报,2005,28(8):1308-1313. 被引量:8
  • 2武勃,黄畅,艾海舟,劳世竑.基于连续Adaboost算法的多视角人脸检测[J].计算机研究与发展,2005,42(9):1612-1621. 被引量:66
  • 3张杰,杨晓飞,赵瑞莲.基于Hough变换圆检测的人眼精确定位方法[J].计算机工程与应用,2005,41(27):43-44. 被引量:36
  • 4Feng G C,Yuen P C.Variance projection function and its application to eye detection for human face recognition [J].Pattern Recognition Letters, 1998, 19(9) : 899-906.
  • 5Bala J,Delong K,Huang J,et al.Visual routine for eye detection using hybrid genetic architectures[C]//Backer E,Gelsema E S. Proceedings of the 13th Intenational Conference on Pattern Recognition.Los Alamitos : IEEE CS Press, 1996,3 : 606-610.
  • 6Brunelli R, Poggio T. Face recognition: Features versus templates. IEEE Transactions on Pattern Analysis and Machine Intelligence,1993,15(10):1042-1052.
  • 7Yang MH, Kriegman DJ, Ahuja N. Detecting faces in images: A survey. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2002,24(1):34-58.
  • 8Bala J, DeJong K, Huang J, Vafaie H, Wechsler H. Visual routine for eye detection using hybrid genetic architectures. In: Backer E,Gelsema ES, eds. Proceedings of the 13th International Conference on Pattern Recognition. Los Alamitos: IEEE CS Press,1996,3:606-610.
  • 9Reinders MJT, Koch RWC, Gerbrands JJ. Locating facial features in image sequences using neural networks. In Essa I, ed.Proceedings of the 2nd International Conference on Automatic Face and Gesture Recognition Los Alamitos: IEEE CS Press, 1996.230--235.
  • 10Wu JX, Zhou ZH. Efficient face candidates selector for face detection. Pattern Recognition, 2003,36(5):1175-1186.

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