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Design of a Lightweight Palmf-Vein Authentication System Based on Model Compression

机译:基于模型压缩的轻量级手掌认证系统设计

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摘要

Palm-vein authentication is a secure and highly accurate vein feature authentication technology that has recently gained a lot of attention. Convolutional neural networks (CNNs) provide relatively high performance in the field of image processing, computer vision, and have been adapted for feature learning of palm-vein images. However, they often require high computation that not only are infeasible for real-time vein verification but also a challenge to apply on mobile devices. To address this limitation, we proposed a lightweight MobileNet based deep learning (DL) architecture with depthwise separable convolution (DSC) and adopt a knowledge distillation (KD) method to learn the knowledge from the more complex CNN, which makes it small but effective. Through the depth of separable convolution, the number of model parameters is significantly decreased, while still remaining high accuracy and stable performance. Experiments demonstrated that the size of the proposed model is 100 times less than the Inception v3 model, while the performance can go beyond 98% correct identification rate (CIR) for the CASIA database.
机译:Palm-VEIN认证是一种安全且高度准确的静脉功能认证技术,最近获得了很多关注。卷积神经网络(CNNS)在图像处理,计算机视觉领域提供了相对高的性能,并且已经适用于Palm-vein图像的特征学习。然而,它们通常需要高计算,这不仅是实时静脉验证的不可行,而且是在移动设备上申请的挑战。为了解决这个限制,我们提出了一种基于轻量级的MobileNet基于深度学习(DL)架构,具有深度可分离的卷积(DSC),并采用知识蒸馏(KD)方法来从更复杂的CNN中学习知识,这使得它变得小而有效。通过可分离卷积的深度,模型参数的数量显着降低,同时仍然仍然是高精度和稳定的性能。实验表明,所提出的模型的大小比成立v3模型少100倍,而性能可以超出Casia数据库的98%正确的识别率(CIR)。

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