Quality of Pre-trained Deep-Learning Models for Palmprint Recognition

Valentin Rosca, A. Ignat
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引用次数: 2

Abstract

This paper presents a comprehensive study of deep learning methods and datasets used for solving the palmprint recognition problem. The quality of image embeddings provided by deep neural networks, pre-trained on the ImageNet dataset, are evaluated on palmprint recognition in the visible spectrum task. In our tests, we used twelve publicly available datasets obtained with different types of acquisition procedures: constrained, partially constrained and unconstrained. Sixteen convolutional neural networks (two from the VGG family, six from ResNet, three from Inception, two from MobileNet and three from DenseNet) were evaluated. We analyzed the results from the point of view of specialization potential, dataset difficulty and general parameter tuning. For evaluation, EER (Equal Error Rate) was employed. We ranked the datasets and appraised the feature vectors computed by the pre-trained networks using this metric. The best results, on average, were provided by the deep neural networks from the MobileNet family. The distances used for comparing the feature vectors were Euclidean, Cityblock, cosine and correlation. The best results were obtained with the cosine family distances.
掌纹识别中预训练深度学习模型的质量
本文全面研究了用于解决掌纹识别问题的深度学习方法和数据集。通过在ImageNet数据集上进行预训练的深度神经网络提供的图像嵌入质量,在可见光谱任务中对掌纹识别进行评估。在我们的测试中,我们使用了12个公开可用的数据集,这些数据集是通过不同类型的获取程序获得的:受约束的、部分受约束的和不受约束的。16个卷积神经网络(2个来自VGG家族,6个来自ResNet, 3个来自盗梦空间,2个来自MobileNet, 3个来自DenseNet)被评估。我们从专业化潜力、数据集难度和一般参数调优的角度对结果进行了分析。评价采用EER(等错误率)。我们对数据集进行排序,并使用该度量对预训练网络计算的特征向量进行评价。平均而言,最好的结果是由MobileNet家族的深度神经网络提供的。用于比较特征向量的距离是欧氏距离、Cityblock距离、余弦距离和相关距离。以余弦族距离为最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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