...
【24h】

Face recognition with Patch-based Local Walsh Transform

机译:与基于补丁的本地沃尔什变换的人脸识别

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

AbstractIn this paper, we present a novel dense local image representation method called Local Walsh Transform (LWT) by applying the well-known Walsh Transform (WT) to each pixel of an image. The LWT decomposes an image into multiple components, and produces LWT complex images by using the symmetrical relationship between them. Cascaded LWT (CLWT) is also a dense local image representation obtained by applying the LWT again to real and imaginary parts of LWT complex images. Applying the LWT once more to real and imaginary parts of LWT complex images increases the success rate especially on low resolution images. In order to combine the advantages of sparse and dense local image representations, we present Patch-based LWT (PLWT) and Patch-based CLWT (PCLWT) by applying the LWT and CLWT, respectively, to patches extracted around landmarks of multi-scaled face images. The extracted high dimensional features of the patches are reduced through the application of the Whitened Principal Component Analysis (WPCA). Experimental results show that both the PLWT and PCLWT are robust to illumination and expression changes, occlusion and low resolution. The state-of-the-art performance is achieved on the FERET and SCface databases, and the second best unsupervised category result is achieved on the LFW database.Highlights?We present novel unsupervised dense local image repr. methods called LWT and CLWT.?The PLWT and PCLWT methods combine the adv. of both sparse and dense local repr.?PLWT and PCLWT are robust to illum. and expression changes, occlusion and low res.?The methods are applied to face identification and face verification problems.?The state-of-the-art performance is achieved on the FERET and SCface databases.?The second best unsupervised category result is achieved on the LFW database.]]>
机译:<![cdata [ Abstract 在本文中,我们通过应用众所周知的沃尔什变换来提出一种名为本地沃尔什变换(LWT)的新型密集的局部图像表示方法(WT )到图像的每个像素。 LWT将图像分解为多个组件,并通过使用它们之间的对称关系产生LWT复杂图像。级联LWT(CLWT)也是通过将LWT再次应用于LWT复杂图像的真实和虚部的实部和虚部的密集局部图像表示。再次将LWT应用于LWT复杂图像的实数和虚部,尤其是在低分辨率图像上增加成功率。为了结合稀疏和密集的局部图像表示的优点,我们通过分别施加LWT和CLWT来提取基于补丁的LWT(PLWT)和基于补丁的CLWT(PCLWT),以修补在多缩放的面部的地标附近图片。通过应用白化主成分分析(WPCA),减少了贴片的提取的高尺寸特征。实验结果表明,PLWT和PCLWT都具有鲁棒,对照明和表达变化,闭塞和低分辨率。在FERET和SCFACE数据库上实现最先进的性能,并在LFW数据库上实现了第二个最佳无监督的类别结果。 突出显示 ?< / ce:标签> 我们提出了小说无监督的密集的本地图像'。称为lwt和clwt的方法。 PLWT和PCLWT方法结合了ADV。稀疏和密集的局部作家。 PLWT和PCLWT对ILLUM具有鲁棒性。和表达更改,遮挡和低分辨率。 方法应用于面部识别和面部验证问题。 在Feret和SCFace数据库上实现最先进的性能。 第二个LFW数据库上实现了最佳无监督的类别结果。 ]]>

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