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High-Capacity Fingerprint Recognition System based on a Dynamic Memory-Capacity Estimation Technique

机译:基于动态内存容量估计技术的大容量指纹识别系统

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Estimating the current memory capacity of a neural network based recognition system is critical to maximally use the available memory capacity in memorizing new inputs without exceeding the limit of the capacity (catastrophic forgetting). In this paper, we propose a dynamic approach to monitoring a network's memory capacity. Prior works in this area have presented static expressions dependent on neuron count N, forcing to assume the worst-case input characteristics for bias and correlation when setting the capacity of the network. Instead, our technique operates simultaneously with the learning of a Hopfield network and concludes with a capacity estimate based on the patterns which were stored. By continuously updating the crosstalk associated with the stored patterns, our model guards the network against overwriting its memory traces and exceeding its capacity. We designed a fingerprint recognition system based on our dynamic estimation technique. With the experiment using NIST Special Database 10, the system achieves 2.7 to 8X larger memory-capacity as compared to the baseline systems using the static capacity estimates.
机译:估计基于神经网络的识别系统的当前存储容量对于在不超出容量限制的情况下最大程度地利用可用存储容量来存储新输入至关重要(灾难性的遗忘)。在本文中,我们提出了一种动态方法来监视网络的内存容量。该领域中的先前工作已经提出了依赖于神经元数N的静态表达式,从而在设置网络容量时必须假定最坏情况下的输入特性具有偏差和相关性。取而代之的是,我们的技术与Hopfield网络的学习同时进行,并根据存储的模式得出容量估算值。通过不断更新与存储的模式相关的串扰,我们的模型可以防止网络覆盖其存储迹线并超过其容量。我们基于动态估计技术设计了一种指纹识别系统。通过使用NIST Special Database 10进行的实验,与使用静态容量估算值的基准系统相比,该系统的存储容量达到了2.7至8倍。

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