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Binarized statistical features for improved iris and periocular recognition in visible spectrum

机译:二值化统计特征可改善可见光谱中的虹膜和眼周识别

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Visible spectrum iris verification has drawn substantial attention due to the feasibility, convenience and also accepted per-formance. This further allows one to perform the iris verification in an unconstrained environment at-a-distance and on the move. The integral part of the visible iris recognition rely on the accurate texture representation algorithm that can effectively capture the uniqueness of the texture even in the challenging conditions like reflection, illumination among others. In this paper, we explore a new scheme for the robust visible iris verification based on Binarized Statistical Image Features (BSIF). The core idea of the BSIF descriptor is to compute the binary code for each pixel by projecting them on the subspace which is learned from natural images using Independent Component Analysis (ICA). Thus, the BSIF is expected to encode the texture features more robustly when compared to contemporary schemes like Local Binary Patterns and its variants. The extensive experiments are carried out on the visible iris dataset captured using both Light field and conventional camera. The proposed feature extraction method is also extended for enhanced periocular recognition. Finally, we also present a comparative analysis with popular state-of-the-art iris recognition scheme.
机译:可见光谱虹膜验证由于其可行性,便利性和公认的性能而受到了广泛的关注。这进一步允许人们在不受限制的环境中一目了然且在移动中执行虹膜验证。可见虹膜识别的组成部分依赖于精确的纹理表示算法,即使在诸如反射,照明等挑战性条件下,该算法也可以有效地捕获纹理的唯一性。在本文中,我们探索了一种基于二值化统计图像特征(BSIF)的鲁棒的可见虹膜验证的新方案。 BSIF描述符的核心思想是通过将每个像素投影到子空间上来计算每个像素的二进制代码,该子空间是使用独立分量分析(ICA)从自然图像中获悉的。因此,与诸如本地二进制模式及其变体的现代方案相比,期望BSIF对纹理特征进行更鲁棒的编码。在使用光场和常规相机捕获的可见虹膜数据集上进行了广泛的实验。所提出的特征提取方法也被扩展以增强眼周识别。最后,我们还对流行的最新虹膜识别方案进行了比较分析。

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