首页> 外文期刊>Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on >Extended-Depth-of-Field Iris Recognition Using Unrestored Wavefront-Coded Imagery
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Extended-Depth-of-Field Iris Recognition Using Unrestored Wavefront-Coded Imagery

机译:使用未还原的波前编码影像的扩展景深虹膜识别

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Iris recognition can offer high-accuracy person recognition, particularly when the acquired iris image is well focused. However, in some practical scenarios, user cooperation may not be sufficient to acquire iris images in focus; therefore, iris recognition using camera systems with a large depth of field is very desirable. One approach to achieve extended depth of field is to use a wavefront-coding system as proposed by Dowski and Cathey, which uses a phase modulation mask. The conventional approach when using a camera system with such a phase mask is to restore the raw images acquired from the camera before feeding them into the iris recognition module. In this paper, we investigate the feasibility of skipping the image restoration step with minimal degradation in recognition performance while still increasing the depth of field of the whole system compared to an imaging system without a phase mask. By using a simulated wavefront-coded imagery, we present the results of two different iris recognition algorithms, namely, Daugman's iriscode and correlation-filter-based iris recognition, using more than 1000 iris images taken from the Iris Challenge Evaluation database. We carefully study the effect of an off-the-shelf phase mask on iris segmentation and iris matching, and finally, to better enable the use of unrestored wavefront-coded images, we design a custom phase mask by formulating an optimization problem. Our results suggest that, in exchange for some degradation in recognition performance at the best focus, we can increase the depth of field by a factor of about four (over a conventional camera system without a phase mask) by carefully designing the phase masks.
机译:虹膜识别可以提供高精度的人识别,尤其是当所获取的虹膜图像聚焦良好时。但是,在某些实际情况下,用户合作可能不足以聚焦获取虹膜图像。因此,非常需要使用具有大景深的相机系统进行虹膜识别。一种实现扩展景深的方法是使用Dowski和Cathey提出的波前编码系统,该系统使用相位调制掩模。当使用具有这种相位掩模的相机系统时,常规方法是恢复从相机获取的原始图像,然后再将其输入到虹膜识别模块中。在本文中,我们研究了与不具有相位掩膜的成像系统相比,跳过图像恢复步骤且识别性能降级最小的可行性,同时仍增加了整个系统的景深。通过使用模拟的波前编码图像,我们使用来自Iris挑战评估数据库的1000多个虹膜图像,展示了两种不同的虹膜识别算法的结果,即Daugman虹膜代码和基于相关滤波器的虹膜识别。我们仔细研究了现成的相位掩模对虹膜分割和虹膜匹配的影响,最后,为了更好地使用未还原的波前编码图像,我们通过提出优化问题来设计自定义相位掩模。我们的结果表明,以最好的聚焦度来代替识别性能的某些下降,我们可以通过精心设计相位掩膜,将景深增加大约四倍(在没有相位掩膜的传统相机系统上)。

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