Dorsal Hand Vein Pattern Recognition: A Comparison between Manual and Automatic Segmentation Methods.

IF 2.3 Q3 MEDICAL INFORMATICS
Waheed Ali Laghari, Audrey Huong, Kim Gaik Tay, Chang Choon Chew
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引用次数: 0

Abstract

Objectives: Various techniques for dorsal hand vein (DHV) pattern extraction have been introduced using small datasets with poor and inconsistent segmentation. This work compared manual segmentation with our proposed hybrid automatic segmentation method (HHM) for this classification problem.

Methods: Manual segmentation involved selecting a region-of-interest (ROI) in images from the Bosphorus dataset to generate ground truth data. The HHM combined histogram equalization and morphological and thresholding-based algorithms to localize veins from hand images. The data were divided into training, validation, and testing sets with an 8:1:1 ratio before training AlexNet. We considered three image augmentation strategies to enlarge our training sets. The best training hyperparameters were found using the manually segmented dataset.

Results: We obtained a good test accuracy (91.5%) using the model trained with manually segmented images. The HHM method showed slightly inferior performance (76.5%). Considerable improvement was observed in the test accuracy of the model trained with the inclusion of automatically segmented and augmented images (84%), with low false acceptance and false rejection rates (0.00035% and 0.095%, respectively). A comparison with past studies further demonstrated the competitiveness of our technique.

Conclusions: Our technique can be feasible for extracting the ROI in DHV images. This strategy provides higher consistency and greater efficiency than the manual approach.

手背静脉模式识别:手动和自动分割方法的比较。
目的:介绍了各种手背静脉(DHV)模式提取技术,这些技术使用的小数据集分割效果差且不一致。这项工作比较了人工分割和我们提出的混合自动分割方法(HHM)的分类问题。方法:人工分割涉及从博斯普鲁斯数据集中选择图像的兴趣区域(ROI)来生成地面真值数据。该方法结合了直方图均衡化和基于形态学和阈值的算法来定位手部图像中的静脉。在训练AlexNet之前,将数据按8:1:1的比例分为训练集、验证集和测试集。我们考虑了三种图像增强策略来扩大我们的训练集。使用手动分割的数据集找到最佳训练超参数。结果:使用人工分割图像训练的模型获得了良好的测试准确率(91.5%)。HHM法表现稍差(76.5%)。使用自动分割和增强图像训练的模型的测试精度有了很大的提高(84%),错误接受率和错误拒绝率都很低(分别为0.00035%和0.095%)。与以往研究的对比进一步证明了我们技术的竞争力。结论:该方法可用于DHV图像的感兴趣区域提取。该策略提供了比手动方法更高的一致性和效率。
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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来源期刊
Healthcare Informatics Research
Healthcare Informatics Research MEDICAL INFORMATICS-
CiteScore
4.90
自引率
6.90%
发文量
44
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