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Predict and improve iris recognition performance based on pairwise image quality assessment

机译:基于成对图像质量评估预测和提高虹膜识别性能

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The iris recognition performance is partially dependent on the relative quality variations of pairwise iris images. So bridging the gap between the quality and the matching score of pairwise iris images is helpful to predict and improve iris recognition performance. This paper formulates the relationship between matching score and quality of pairwise iris images as a statistical regression problem. Firstly, a number of quality measures of iris images such as focus, motion blur, illumination, off-angle, occlusions and dilation are computed as the performance related feature vector of iris images. And then partial least squares regression is used to establish two models to predict the intra score and inter score from pairwise iris image quality respectively. Finally, we define the uncertainty interval of matching scores. The uncertain match pairs are discarded to improve the recognition performance. Extensive experiments on ICE 1.0, CASIA-Iris-Lamp and CASIA-Iris-Thousand demonstrate that the proposed method can accurately estimate the distributions of matching scores. It can simultaneously improve the performance, even using simple features in recognition.
机译:虹膜识别性能部分地依赖于成对虹膜图像的相对质量变化。因此,拓宽质量与成对虹膜图像的匹配分数之间的差距有助于预测和提高虹膜识别性能。本文制定了与统计回归问题的匹配分数和质量之间的关系。首先,计算诸如焦点,运动模糊,照明,偏角,闭塞和扩张的虹膜图像的许多质量测量作为虹膜图像的性能相关特征向量。然后,部分最小二乘回归用于建立两个模型以分别预测帧内评分并分别帧间得分。最后,我们定义了匹配分数的不确定性间隔。丢弃不确定的比赛对以提高识别性能。 CASIA-IRIS-LAMP和CASIA-IRIS-千冰上的广泛实验表明,该方法可以准确估计匹配分数的分布。它可以同时提高性能,即使使用简单的识别功能。

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