首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >A ROBUST FEATURE EXTRACTION ALGORITHM BASED ON CLASS-MODULAR IMAGE PRINCIPAL COMPONENT ANALYSIS FOR FACE VERIFICATION
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A ROBUST FEATURE EXTRACTION ALGORITHM BASED ON CLASS-MODULAR IMAGE PRINCIPAL COMPONENT ANALYSIS FOR FACE VERIFICATION

机译:一种鲁棒特征提取算法,基于脸部验证类模块图像主成分分析

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Face verification systems reach good performance on ideal environmental conditions. Conversely, they are very sensitive to non-controlled environments. This work proposes the class-Modular Image Principal Component Analysis (cMIM-PCA) algorithm for face verification. It extracts local and global information of the user faces aiming to reduce the effects caused by illumination, facial expression and head pose changes. Experimental results performed over three well-known face databases showed that cMIMPCA obtains promising results for the face verification task.
机译:面部验证系统在理想的环境条件下达到良好的性能。 相反,它们对非受控环境非常敏感。 这项工作提出了用于面部验证的模块模块图像主成分分析(CMIM-PCA)算法。 它提取用户面临的本地和全球信息,旨在减少由照明,面部表情和头部姿势变化引起的效果。 在三个众所周知的面部数据库中进行的实验结果表明,CMIMPCA获得面部验证任务的有希望的结果。

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