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Fingerprint Retrieval Using a Specialized Ensemble of Attractor Networks

机译:指纹检索使用吸引器网络的专用集合

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We tested the performance of the Ensemble of Attractor Neural Networks (EANN) model for fingerprint learning and retrieval. The EANN model has proved to increase the random patterns storage capacity, when compared to a single attractor of equal connectivity. In this work, we tested the EANN with real patterns, i.e. fingerprints dataset. The EANN improved the retrieval performance for real patterns more than tripling the capacity of the single attractor with the same number of connections. The EANN modules can also be specialized for different patterns sets according to their characteristics, i.e. pattern/network sparseness (activity). Three EANN modules were assigned with skeletonized fingerprints (low activity), binarized (original) fingerprints (medium activity), and dilated/thickened fingerprint (high activity), and their retrieval was checked. The more sparse the code the larger the storage capacity of the module. The EANN demonstrated to improve the retrieval capacity of the single network, and it can be very helpful for module specialization for different types of real patterns.
机译:我们测试了指纹的学习和检索吸引合奏神经网络(EANN)模型的性能。该EANN模型已经被证明增加通过随机图案的存储容量,比等于连接的单个吸引时。在这项工作中,我们测试了EANN与真正的模式,即指纹数据集。该EANN改善了真实图案检索性能多于三倍具有相同数目的连接的单个吸引子的容量。所述EANN模块也可以根据它们的特性,即图案/网络稀疏(活性)专门用于不同的模式集。三EANN模块与镂空指纹(低活性),二值化(原)的指纹(中等活性)被分配,并且扩张/增稠指纹(高活性),和它们的检索,检查。越稀疏的代码越大模块的存储容量。该EANN证明,以提高单一网络的检索能力,它可以为模块专门针对不同类型的实模式非常有帮助。

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