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引用次数: 12
摘要
多光谱虹膜识别利用电磁波谱的多个波段信息,更好地表征虹膜纹理的某些生理特征,提高识别精度。本文解决了单光谱与交叉光谱性能的问题,并比较了不同特征类型的分数级融合精度,结合不同的波长来克服约束较少的记录环境中的局限性。进一步研究了Doddington在一个光谱中的“山羊”(特别难以识别的用户)是否也延伸到其他光谱。针对不同波长下的特征稳定性问题,本文采用人工地真值分割,避免了分割影响带来的偏差。在公共UTIRIS多光谱虹膜数据集上使用4种特征提取技术进行的实验表明,在不同的特征类型中,结合NIR + Red进行2通道融合和NIR + Red + Blue进行3通道融合时,具有显著的增强效果。选择性特征级融合在不增加虹膜编码总长度的情况下提高了整体性能,特别是跨光谱性能。
Multispectral iris recognition uses information from multiple bands of the electromagnetic spectrum to better represent certain physiological characteristics of the iris texture and enhance obtained recognition accuracy. This paper addresses the questions of single versus cross-spectral performance and compares score-level fusion accuracy for different feature types, combining different wavelengths to overcome limitations in less constrained recording environments. Further it is investigated whether Doddington's “goats” (users who are particularly difficult to recognize) in one spectrum also extend to other spectra. Focusing on the question of feature stability at different wavelengths, this work uses manual ground truth segmentation, avoiding bias by segmentation impact. Experiments on the public UTIRIS multispectral iris dataset using 4 feature extraction techniques reveal a significant enhancement when combining NIR + Red for 2-channel and NIR + Red + Blue for 3-channel fusion, across different feature types. Selective feature-level fusion is investigated and shown to improve overall and especially cross-spectral performance without increasing the overall length of the iris code.