KPmixer-a ConvMixer-based Network for Finger Knuckle Print Recognition

Ngoc-Du Tran, H. Lê, Van-Truong Pham, Thi-Thao Tran
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引用次数: 0

Abstract

Biometric technology is increasingly popular and has many practical applications in our lives, such as fingerprint recognition, face recognition, iris recognition, etc. In biometrics based recognition technologies, finger knuckle print recognition (FKP) has received a lot of research attention recently. This method has many advantages compared to the others such as fingerprint recognition and iris recognition. Motivated by the advantages of FKR and advances of deep learning, this paper proposes a finger knuckle print recognition model, namely KPmixer. In particular, we modify the Convmixer model using variable-size kernels to reduce the number of parameters of the model and help the model mix spatial information at various distances. At the same time, we recommend the SE+ module to increase the accuracy of FKP recognition. Moreover, we propose to use a set of effective data augmentation methods for FKP recognition. The performance of the proposed model is compared with modern CNN models such as Convmixer, Resnet18, MobileNet, and DenseNet, showing an outstanding result in terms of accuracy.
kpmixer -一种基于convmixer的指关节指纹识别网络
生物识别技术日益普及,在我们的生活中有很多实际应用,如指纹识别、人脸识别、虹膜识别等。在基于生物特征的识别技术中,指关节指纹识别(FKP)近年来受到了广泛的关注。与指纹识别和虹膜识别相比,该方法具有许多优点。基于FKR的优势和深度学习的进步,本文提出了一种指关节指纹识别模型KPmixer。特别是,我们使用变大小核来修改Convmixer模型,以减少模型的参数数量,并帮助模型在不同距离上混合空间信息。同时,我们推荐使用SE+模块来提高FKP识别的准确率。此外,我们提出了一套有效的数据增强方法用于FKP识别。将该模型的性能与Convmixer、Resnet18、MobileNet、DenseNet等现代CNN模型进行了比较,在准确率方面取得了优异的成绩。
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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