首页> 外文期刊>ScientificWorldJournal >Color Face Recognition Based on Steerable Pyramid Transform and Extreme Learning Machines
【24h】

Color Face Recognition Based on Steerable Pyramid Transform and Extreme Learning Machines

机译:基于可操纵金字塔变换和极端学习机的彩色人脸识别

获取原文
           

摘要

This paper presents a novel color face recognition algorithm by means of fusing color and local information. The proposed algorithm fuses the multiple features derived from different color spaces. Multiorientation and multiscale information relating to the color face features are extracted by applying Steerable Pyramid Transform (SPT) to the local face regions. In this paper, the new three hybrid color spaces,YSCr,ZnSCr, andBnSCr, are firstly constructed using theCbandCrcomponent images of theYCbCrcolor space, theScolor component of theHSVcolor spaces, and theZnandBncolor components of the normalizedXYZcolor space. Secondly, the color component face images are partitioned into the local patches. Thirdly, SPT is applied to local face regions and some statistical features are extracted. Fourthly, all features are fused according to decision fusion frame and the combinations of Extreme Learning Machines classifiers are applied to achieve color face recognition with fast and high correctness. The experiments show that the proposed Local Color Steerable Pyramid Transform (LCSPT) face recognition algorithm improves seriously face recognition performance by using the new color spaces compared to the conventional and some hybrid ones. Furthermore, it achieves faster recognition compared with state-of-the-art studies.
机译:本文通过融合颜色和局部信息提出了一种新颖的色彩面部识别算法。所提出的算法融合了从不同颜色空间导出的多个功能。通过将可转向金字塔变换(SPT)应用于本地面部区域来提取与颜色面部特征有关的多大学和多尺度信息。在本文中,新的三个混合彩色空间,YSCR,ZnSCr,Andbnscr,首先是使用ThecBandCrColor空间,HSVColor空间的光谱组件的ThecBandCrcomponent图像和归一化XYZColor空间的ZnandBnColor组件构建。其次,颜色分量面部图像被划分为本地贴片。第三,SPT应用于局部面部区域,提取一些统计特征。第四,所有特征都根据决策融合帧融合,并且应用极限学习机器分类器的组合来实现以快速和高正确的彩色面部识别。实验表明,与传统和一些混合动力器件相比,所提出的本地颜色可操纵金字塔变换(LCSPT)面部识别算法通过使用新的色彩空间来提高认真面对识别性能。此外,与最先进的研究相比,它达到了更快的识别。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号