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A Finger-Vein Image Quality Assessment Algorithm Combined with Improved SMOTE and Convolutional Neural Network

机译:结合改进的SMOTE和卷积神经网络的手指静脉图像质量评估算法

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Biometric identification technology is a technology that uses human biological characteristics for identity identification. Although it is a relatively new technology, it is widely favored for its characteristics that they are difficult to be forged, stable, accurate and non-invasive. For Finger-vein recognition, the distribution and structure of vein branches and curves are random and unique to each individual, so matching algorithms can be used to identify individuals. Finger-vein image quality, as an important guarantee for the accuracy of recognition system, should be paid more attention. The purpose of this project is to evaluate the quality of finger-vein images and improve the accuracy of finger-vein recognition by deciding whether to retain the collected finger-vein images. In this paper, a traditional finger-vein recognition algorithm, called adaptive histogram of competitive Gabor responses, is produced to distinguish the high quality and low quality images. Then, due to the extreme imbalance of the high quality and low quality images, improved SMOTE is used to get the low quality images, and finally, uses the convolutional neural network to differentiate these images.
机译:生物特征识别技术是一种利用人类生物学特征进行身份识别的技术。尽管这是一项相对较新的技术,但由于其难以伪造,稳定,准确和无创的特点而受到广泛青睐。对于手指静脉识别,静脉分支和曲线的分布和结构是随机的,并且对于每个个体都是唯一的,因此可以使用匹配算法来识别个体。手指静脉图像质量作为识别系统准确性的重要保证,应引起更多重视。该项目的目的是通过确定是否保留收集的手指静脉图像来评估手指静脉图像的质量并提高手指静脉识别的准确性。本文提出了一种传统的指静脉识别算法,称为竞争Gabor响应的自适应直方图,以区分高质量和低质量的图像。然后,由于高质量和低质量图像的极端不平衡,使用改进的SMOTE来获得低质量图像,最后,使用卷积神经网络来区分这些图像。

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