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Rank information fusion for challenging ocular image recognition

机译:等级信息融合可用于具有挑战性的眼图识别

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Under challenging imaging conditions which include lower resolution, occlusion, motion and de-focus blur, iris recognition performance degrades. In such conditions ocular region has been suggested as a new biometric modality which has the ability to overcome some of the above mentioned drawbacks. In this work, we investigate the performance of rank level fusion approach that fuses the outputs of three ocular region matching algorithms, namely, Probabilistic Deformation Model (PDM), modified Scale-Invariant Feature Transform (m-SIFT) and Gradient Orientation Histogram (GOH), employed for recognizing challenging ocular images in the Face and Ocular Challenge Series (FOCS) dataset. We investigate different rank fusion schemes including the highest rank, Borda count, plurality voting and Markov chain and demonstrate that rank-level fusion can lead to improved recognition performance.
机译:在具有挑战性的成像条件下,包括较低的分辨率,遮挡,运动和散焦模糊,虹膜识别性能会下降。在这种情况下,已经提出了眼区域作为一种新的生物特征形式,其具有克服一些上述缺点的能力。在这项工作中,我们研究了等级融合方法的性能,该方法融合了三种眼部区域匹配算法(概率变形模型(PDM),改进的尺度不变特征变换(m-SIFT)和梯度方向直方图(GOH))的输出),用于识别“面部和眼部挑战系列(FOCS)”数据集中的具有挑战性的眼部图像。我们研究了包括最高等级,Borda计数,复数投票和马尔可夫链在内的不同等级融合方案,并证明了等级级融合可以提高识别性能。

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