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Orthogonal bipolar vectors as multilayer perceptron targets for biometric pattern recognition

机译:正交双极向量作为生物感知模式识别的多层感知器目标

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This work proposes the unconventional use of orthogonal bipolar vectors (OBVs) as new targets for multilayer perceptron (MLP) training and test with biometric patterns represented by iris images. Nine different MLP models corresponding to nine different target vectors (including OBVs) have been developed for experimental performance comparison purposes. The experiments consisted of using biometric patterns from CASIA Iris Image Database developed by Chinese Academy of Sciences - Institute of Automation. The experimental results led to conclude that using OBVs as targets for MLP learning can provide better recognition performances rather than using other vectors as targets. Also, the results have shown that MLPs can be trained for OBVs spending smaller number of epochs to achieve relevant recognition rates compared to other types of target vectors. Therefore, the computational load for training MLPs can be reduced and biometric pattern recognition performances can be improved by using OBVs as targets.
机译:这项工作提出了非常规使用正交双极向量(OBV)作为多层感知器(MLP)训练和以虹膜图像代表的生物特征识别模式进行测试的新目标。为了实验性能比较的目的,已经开发了对应于九种不同目标向量(包括OBV)的九种不同的MLP模型。实验包括使用中国科学院自动化研究所开发的CASIA Iris图像数据库的生物特征识别模式。实验结果得出结论,使用OBV作为MLP学习的目标可以提供更好的识别性能,而不是使用其他矢量作为目标。而且,结果表明,与其他类型的目标向量相比,可以训练MLP的OBV花费较少的时期来实现相关的识别率。因此,通过使用OBV作为目标,可以减少用于训练MLP的计算量,并可以提高生物特征识别模式的性能。

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