...
首页> 外文期刊>Applied optics >Restoration and recognition of distant, blurry irises
【24h】

Restoration and recognition of distant, blurry irises

机译:恢复和识别远距离模糊的虹膜

获取原文
获取原文并翻译 | 示例
           

摘要

Raw iris images collected outdoors at standoff distances exceeding 25 m are susceptible to noise and atmospheric blur and even under ideal imaging conditions are too degraded to carry out recognition with high accuracy. Traditionally, atmospherically distorted images have been corrected through the use of unique hardware components such as adaptive optics. Here we apply a pure digital image restoration approach to correct for optical aberrations. Image restoration was applied to both single images and image sequences. We propose both a single-frame denoising and deblurring approach, and a multiframe fusion and deblurring approach. To compare performance of the proposed methods, iris recognitions were carried out using the approach of Daugman. Hamming distances (HDs) of computed binary iris codes were measured before and after the restoration. We found the HD decreased from >0.46 prior to a mean value of <0.39 for random single images. The multiframe fusion approach produced the most robust restoration and achieved a mean HD for all subjects in our data set of 0.33 while known false matches remained at 0.44. These results show that, when used properly, image restoration approaches do significantly increase recognition performance for known true positives with low increase in false positive detections, and irises can be recognized in turbulent atmospheric conditions.
机译:在远距离处超过25 m的户外采集的原始虹膜图像容易受到噪声和大气模糊的影响,即使在理想的成像条件下,它们也会退化得无法进行高精度的识别。传统上,通过使用独特的硬件组件(例如自适应光学器件)可以校正大气失真的图像。在这里,我们采用纯数字图像恢复方法来校正光学像差。图像恢复应用于单个图像和图像序列。我们提出了单帧去噪和去模糊方法,以及多帧融合和去模糊方法。为了比较所提出方法的性能,虹膜识别使用Daugman方法进行。在恢复之前和之后,测量计算出的二进制虹膜代码的汉明距离(HDs)。对于随机单张图像,我们发现HD从> 0.46下降到平均值<0.39之前。多帧融合方法产生了最强大的恢复力,并且在我们的数据集中所有对象的平均HD为0.33,而已知的错误匹配保持在0.44。这些结果表明,如果使用得当,图像恢复方法确实可以显着提高对已知真阳性的识别性能,而假阳性检测的增加很少,并且可以在动荡的大气条件下识别虹膜。

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