FV-EffResNet:用于手指静脉识别的高效轻量级卷积神经网络

Yusuf Suleiman Tahir, B. A. Rosdi
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摘要

随着时间的推移,一些深度神经网络已被引入到手指静脉识别中,这些网络已显示出很高的性能水平。然而,目前最先进的深度学习系统大多使用层数和参数不断增加的网络,导致计算成本和复杂性增加。这可能使它们无法实时实现,尤其是在嵌入式硬件上。为了应对这些挑战,本文集中开发了一种名为 FV-EffResNet 的轻量级卷积神经网络(CNN),用于手指静脉识别,旨在找到网络规模、速度和准确性之间的平衡点。改进的关键在于利用了所提出的名为 "高效残差(EffRes)"的新型卷积块,该卷积块旨在促进高效特征提取,同时最大限度地减少参数数量。该块对卷积过程进行分解,采用特定矩形维度的点卷积和深度卷积,分两层(n × 1)和(1 × m)实现,以加强对手指静脉数据的处理。该方法结合了挤压单元、深度卷积和池化策略,从而提高了计算效率。网络的隐层使用 Swish 激活函数,与 ReLU 或 Leaky ReLU 等传统函数相比,Swish 激活函数已被证明能提高性能。此外,文章还采用了循环学习率技术,以加快拟议网络的训练过程。通过在四个基准数据库(即 FV-USM、SDUMLA、MMCBNU_600 和 NUPT-FV)上进行综合实验,证明了所提出的管道的有效性。实验结果表明,EffRes 块对手指静脉识别有显著的影响。所提出的 FV-EffResNet 在识别和验证设置中都达到了最先进的性能,并充分利用了轻量级和低计算成本的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FV-EffResNet: an efficient lightweight convolutional neural network for finger vein recognition
Several deep neural networks have been introduced for finger vein recognition over time, and these networks have demonstrated high levels of performance. However, most current state-of-the-art deep learning systems use networks with increasing layers and parameters, resulting in greater computational costs and complexity. This can make them impractical for real-time implementation, particularly on embedded hardware. To address these challenges, this article concentrates on developing a lightweight convolutional neural network (CNN) named FV-EffResNet for finger vein recognition, aiming to find a balance between network size, speed, and accuracy. The key improvement lies in the utilization of the proposed novel convolution block named the Efficient Residual (EffRes) block, crafted to facilitate efficient feature extraction while minimizing the parameter count. The block decomposes the convolution process, employing pointwise and depthwise convolutions with a specific rectangular dimension realized in two layers (n × 1) and (1 × m) for enhanced handling of finger vein data. The approach achieves computational efficiency through a combination of squeeze units, depthwise convolution, and a pooling strategy. The hidden layers of the network use the Swish activation function, which has been shown to enhance performance compared to conventional functions like ReLU or Leaky ReLU. Furthermore, the article adopts cyclical learning rate techniques to expedite the training process of the proposed network. The effectiveness of the proposed pipeline is demonstrated through comprehensive experiments conducted on four benchmark databases, namely FV-USM, SDUMLA, MMCBNU_600, and NUPT-FV. The experimental results reveal that the EffRes block has a remarkable impact on finger vein recognition. The proposed FV-EffResNet achieves state-of-the-art performance in both identification and verification settings, leveraging the benefits of being lightweight and incurring low computational costs.
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