首页> 外文期刊>Expert Systems with Application >Stereo-based palmprint recognition in various 3D postures
【24h】

Stereo-based palmprint recognition in various 3D postures

机译:在各种3D姿势下基于立体的掌纹识别

获取原文
获取原文并翻译 | 示例

摘要

In order to increase performance in palmprint recognition systems, various devices are normally used to restrict the movement of the hand. These can cause problems, especially for those users with physical disabilities. They also cause significant hygiene problems in multi-user systems. Recently, studies on palmprint recognition systems have progressed towards the development of unconstrained, contactless and unrestricted background techniques. The most common problem encountered in these studies is the alignment arising from the free movement of the hand. Despite 3D hand-acquisition devices which offer extra recognition features to overcome this problem, the applicability of these devices is low because of their increased cost. In this study, a stereo camera was proposed. Although due to matching problems, it is difficult to achieve precise, distinct feature extraction in the unrestricted 3D environment used for palmprint recognition, the orientation of the hand in 3D space can be determined by obtaining depth information. In this study, the depth information was extracted by using the binocular stereo approach. First, the orientation of the hand was estimated by fitting a surface model associated with the eigenvectors of the depth information. Pose correction was then accomplished by establishing a relationship between the orientation and the images. The pose correction greatly relieved the perspective distortion that usually occurs within the various poses of the hands. Next, the region of interest was determined by performing segmentation on the corrected images using the Active Appearance Model (MM). The palmprint features were then extracted via Gabor-based Kernel Fisher Discriminant Analysis. In order to demonstrate the performance of the proposed approach, a new dataset was compiled from stereo images within various scenarios collected from 138 different individuals. As a result of these experimental studies, the EER values, especially on the images captured from different hand orientations in 3D, were reduced from around 14-0.75%. With the help of this suggested approach, the palmprint recognition system was transformed into a more portable form by removing the closed-box mechanisms and equipment restricting movement of the hand. This system can automatically perform pose estimation, hand segmentation and recognition processes without any special intervention. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了提高掌纹识别系统的性能,通常使用各种设备来限制手的运动。这些可能会引起问题,尤其是对于那些身体残障的用户。它们还会在多用户系统中引起严重的卫生问题。近来,关于掌纹识别系统的研究已朝着发展无限制,无接触和无限制的背景技术发展。这些研究中遇到的最常见问题是手的自由运动引起的对齐。尽管3D手动采集设备提供了额外的识别功能来克服此问题,但这些设备的成本增加,因此其适用性较低。在这项研究中,提出了一种立体相机。尽管由于匹配问题,在用于掌纹识别的不受限制的3D环境中难以实现精确,独特的特征提取,但是可以通过获取深度信息来确定手在3D空间中的方向。在这项研究中,深度信息是通过使用双目立体方法提取的。首先,通过拟合与深度信息的特征向量相关的表面模型来估计手的方向。然后通过建立方向和图像之间的关系来完成姿势校正。姿势校正大大减轻了通常在手的各种姿势内发生的透视失真。接下来,通过使用主动外观模型(MM)对校正后的图像进行分割来确定关注区域。然后通过基于Gabor的Kernel Fisher判别分析提取掌纹特征。为了证明所提出方法的性能,从从138个不同个体收集的各种场景中的立体图像编译了一个新的数据集。这些实验研究的结果是,EER值(尤其是从3D方向不同手部捕获的图像上的EER值)从14-0.75%降低了。借助这种建议的方法,掌纹识别系统通过去除限制手部移动的封闭盒机制和设备而转变为更便携的形式。该系统可以自动执行姿势估计,手部分割和识别过程,而无需任何特殊干预。 (C)2017 Elsevier Ltd.保留所有权利。

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