首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >MULTIMODAL BIOMETRICS BY FACE AND HAND IMAGES TAKEN BY A CELL PHONE CAMERA
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MULTIMODAL BIOMETRICS BY FACE AND HAND IMAGES TAKEN BY A CELL PHONE CAMERA

机译:手机摄像头拍摄的人脸和手部影像的多模态生物

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This paper presents a multimodal approach for a biometrics verification system. It is based on face and hand images captured by a cell phone. The algorithm includes all parts that are required for face and hand verification, such as feature extraction, classification and authentication. To find local facial features, such as eyes, mouth and nose, we apply a point distribution model and active shape models. We use the same system to find distinctive points in hand geometry. The face feature vector is constructed by applying a Gabor filter to the image and extracting the key points found by an active shape model. The palm feature vector contains characteristics of the hand geometry features. A support vector machine (SVM) is applied to verify the identity of the user. One SVM machine is built for each person in the database to distinguish that person from others. To test the algorithm we built our own database containing face and hand images taken by a cell phone camera. The database contains 480 frontal face images and 120 hand images of 30 persons (16 face images and 4 hand images per person).
机译:本文提出了一种生物特征验证系统的多模式方法。它基于手机捕获的面部和手部图像。该算法包括面部和手部验证所需的所有部分,例如特征提取,分类和身份验证。为了找到局部的面部特征,例如眼睛,嘴和鼻子,我们应用了点分布模型和活动形状模型。我们使用相同的系统来查找手部几何形状中的独特点。脸部特征向量是通过对图像应用Gabor滤波器并提取活动形状模型找到的关键点来构造的。手掌特征向量包含手部几何特征的特征。应用支持向量机(SVM)来验证用户的身份。为数据库中的每个人构建一台SVM计算机,以将该人与其他人区分开。为了测试该算法,我们建立了自己的数据库,其中包含手机摄像头拍摄的面部和手部图像。该数据库包含480张正面图像和30个人的120张手部图像(每人16张面部图像和4张手部图像)。

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