基于BDIP和BVLC矩的SVM分类器人脸检测系统

Tien Dzung Nguyen, Quy Tran Thanh, Thang Man Duc, Trang Nguyen Quynh, T. Hoang
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引用次数: 5

摘要

本文将支持向量机(SVM)分类器用于身份验证中的人脸检测。首先从输入帧中分配候选人脸,然后将其归一化为200×200像素图像。然后通过BDIP和BVLC矩的组合度量候选纹理,并通过被称为高效分类工具的SVM分类器将候选纹理分为人脸和非人脸。在SVM学习中,在不同的光照条件和面部表情下,创建了一个包含2500张人脸和2500张非人脸的数据库。实验表明,所使用的特征在人脸检测系统中基于SVM的分类问题上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM classifier based face detection system using BDIP and BVLC moments
In this paper, a support vector machine (SVM) classifier has been used to detect a face in an authentication application. A face candidate is first allocated from the input frame and then normalized to 200×200 pixels images. The textureness of candidates is then measured by the combination of BDIP and BVLC moments and classified into face and non-face ones by a SVM classifier which is known as efficient classification tool. In SVM learning, a DB of 2500 faces and 2500 non-faces has been created under different light conditions and face expressions. The experiments showed that the effectiveness of the used features for SVM based classification issue in the face-detection system.
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