New technique for larger ROI extraction of hand vein images

Marlina Yakno, J. Mohamad-Saleh, B. A. Rosdi
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引用次数: 8

Abstract

Region of Interest (ROI) extraction is a crucial step in automatic hand vein biometric and biomedical systems. The aim of ROI extraction is to decide which part of the image is suitable for hand vein feature extraction. The majority vein patterns sometimes can be determined at different locations; left, right and centre of the back of hand. The existing methods have not been able to extract more vein patterns at the right and left borders of the ROI. This paper proposes a hand vein ROI extraction method which is robust at avoiding loss of vein patterns information along the right and left borders of the ROI. First, we determine the threshold value, which will be used to segment the hand region. Second, the hand image is traced using boundary tracing. Third, the Euclidean distance is measured between reference point and hand boundary. Fourth, the distribution diagrams are constructed for the feature points selection. Finally, four coordinates are determined prior to ROI extraction. The experimental results show that the proposed method can extract ROI more accurately and effectively compared with other methods.
手静脉图像大ROI提取新技术
感兴趣区域(ROI)提取是自动手静脉生物识别和生物医学系统的关键步骤。ROI提取的目的是决定图像的哪一部分适合进行手静脉特征提取。多数脉型有时可以在不同位置确定;手背的左,右,中间。现有的方法无法在ROI的左右边界提取更多的静脉模式。本文提出了一种手部静脉感兴趣点提取方法,该方法鲁棒性强,避免了感兴趣点左右边界静脉模式信息的丢失。首先,我们确定阈值,该阈值将用于手部区域的分割。其次,利用边界跟踪技术对手图像进行跟踪。第三,测量参考点与手边界之间的欧氏距离。第四,构造特征点分布图,进行特征点选择。最后,在ROI提取之前确定四个坐标。实验结果表明,与其他方法相比,该方法可以更准确有效地提取ROI。
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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