Finger Vein Recognition Based on Multi-Task Learning

Zhiang Hao, P. Fang, Hanwen Yang
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引用次数: 5

Abstract

In finger vein recognition, traditional methods for extracting ROI based on edge detection, sliding window detection of joint lines, etc. need to set a fixed threshold, which contains many parameters that need to be adjusted. In the case of large illumination changes or poor image quality, the extracted results are not accurate enough. The existing feature extraction method also has a fixed operator pattern and limited extracted feature patterns. Therefore, a large amount of effective feature information is wasted. In this paper, a multi-task neural network model algorithm is proposed, which uses the multi-task learning method to jointly optimize the ROI extraction task and the feature extraction task. This method not only improves the overall data processing efficiency of finger vein recognition system, but also improves the quality of extracted vein features. At the same time, we explore the use of improved loss function based on softmax to train our model. Our model is better than traditional methods and single task neural network model algorithm in MMCBNU [16] FV-USM [17] and DUMLA-HMT [18] data sets.
基于多任务学习的手指静脉识别
在手指静脉识别中,传统的基于边缘检测、关节线滑动窗口检测等提取ROI的方法需要设置固定的阈值,其中包含许多需要调整的参数。在光照变化较大或图像质量较差的情况下,提取的结果不够准确。现有的特征提取方法也存在固定的算子模式和提取的特征模式有限的问题。因此,大量的有效特征信息被浪费了。本文提出了一种多任务神经网络模型算法,利用多任务学习方法对ROI提取任务和特征提取任务进行联合优化。该方法不仅提高了手指静脉识别系统的整体数据处理效率,而且提高了提取静脉特征的质量。同时,我们探索了使用基于softmax的改进损失函数来训练我们的模型。我们的模型在MMCBNU [16] FV-USM[17]和DUMLA-HMT[18]数据集上优于传统方法和单任务神经网络模型算法。
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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