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基于DPM模型的静态人脸检测 被引量:1

Static face detection based on DPM model
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摘要 为了提高人脸识别技术,论文提出基于DPM模型的静态人脸检测算法。首先,将正负样本图像进行预处理,提取图像特征,研究了DPM部件滤波器个数、遮挡与光照强弱对人脸检测效果的影响。实验研究结果表明,论文提出的算法可靠、有效,可以为进一步研究人脸检测技术提供理论支持。 In order to improve the face recognition technology, this paper proposes a staticface detection algorithm based on DPM model. Firstly, the positive and negative sample image is pre processed, the image features are extracted, and the effect of the number of DPM filter, the shielding and the intensity of illumination on face detection is studied.Theresults show that the proposed algorithm is reliable and effective, which can provide theoretical support for further research.
出处 《电子技术(上海)》 2016年第3期12-14,4,共4页 Electronic Technology
关键词 人脸检测 DPM模型 LSVM 根滤波器 部件滤波器 Face detection DPM model LSVM The root filter Filter components
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参考文献15

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