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Efficient Unconstrained Iris Recognition System Based on CCT-Like Mask Filter Bank

机译:基于CCT样掩模滤波器银行的高效无约束虹膜识别系统

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In this paper, a new personal identification method based on unconstrained iris recognition is presented. We apply a nontraditional step for feature extraction where a new circular contourlet filter bank is used to capture the iris characteristics. This idea is based on a new geometrical image transform called the circular contourlet transform (CCT). An efficient multilevel and multidirectional contourlet decomposition method is needed to form a reduced-length quantized feature vector with improved performance. The CCT transform provides both multiscale and multioriented analysis of iris features. Circular contourlet-like mask filters can be used with shapes just like the 2D circular-support regions in different scales and directions. A reduced recognition system is realized using a single branch of the whole decomposition bank, highlighting a system realization with lower complexity and fewer computations. In the proposed recognition system, only five out of seven elements of the gray level cooccurrence matrix are required in the creation of the feature vector, which leads to a further reduction in computations. In addition, the highly discriminative frequency regions due to the use of circular-support decompositions can result in highly accurate feature vectors, reflecting good recognition rates for the proposed system. It is shown that the proposed system has encouraging performance in terms of high recognition rates and a reduced number of elements of the feature vector. This reflects reliable and rapid recognition properties. In addition, some promising characteristics of the system are apparent since it can efficiently be realized with lower computation complexity.
机译:本文提出了一种基于无约束虹膜识别的新的个人识别方法。我们对特征提取应用非传统步骤,其中使用新的圆形轮廓滤波器组来捕获虹膜特性。此思想基于新的几何图像变换,称为圆形轮廓变换(CCT)。需要一种有效的多维el和多向轮廓分解方法来形成具有改进性能的减小量化特征向量。 CCT变换提供了虹膜功能的多尺度和多大学分析。圆形轮廓类掩模过滤器可以与不同尺度和方向的2D圆形支撑区域相同的形状一起使用。使用整个分解库的单个分支实现了减少的识别系统,突出显示了较低的复杂性和计算的系统实现。在所提出的识别系统中,在创建特征向量时只需要七个元素中的七个元素中的五个,这导致计算进一步减少。另外,由于使用圆形支持分解而导致的高度辨别频率区可以导致高度精确的特征向量,反映出所提出的系统的良好识别率。结果表明,所提出的系统在高识别率和特征向量的减少数量的元素方面具有令人鼓舞的性能。这反映了可靠和快速的识别特性。此外,系统的一些有希望的特性是显而易见的,因为它可以有效地以较低的计算复杂性实现。

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