Finger Vein Recognition with Hybrid Deep Learning Approach

Thekra Abbas
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Abstract

Finger vein biometrics is an identification technique based on the vein patterns in fingers, and it has the benefit of being difficult to counterfeit. Due to its high level of security, durability, and performance history, finger vein recognition captures our attention as one of the most significant authentication methods available today. Using a mixed deep learning approach, we investigate the challenge of identifying the finger vein sensor model. Thus far, we use Traditional LSTM architectures for this biometric modality. This work also suggests a brand-new hybrid architecture that shines due to its compactness and a merging with the LSMT layer to be taught. In the experiment, original samples as well as the region of interest data from eight freely available FV-USM datasets are employed. The standard LSTM-based strategy is preferable and produced better outcomes, as seen by the comparison with the earlier approaches. Moreover, the results show that the hybrid CNN and LSTM networks may be used to improve vein detection performance.
基于混合深度学习方法的手指静脉识别
手指静脉生物识别技术是一种基于手指静脉形态的识别技术,具有难以伪造的优点。由于其高水平的安全性,耐用性和性能历史,手指静脉识别作为当今可用的最重要的身份验证方法之一引起了我们的注意。使用混合深度学习方法,我们研究了识别手指静脉传感器模型的挑战。到目前为止,我们使用传统的LSTM架构来实现这种生物识别模式。这项工作还提出了一种全新的混合架构,由于其紧凑性和与将要教授的LSMT层的合并而大出风头。在实验中,使用了来自8个免费的FV-USM数据集的原始样本和感兴趣区域数据。通过与早期方法的比较可以看出,基于标准lstm的策略更可取,并且产生了更好的结果。此外,研究结果表明,混合CNN和LSTM网络可以提高静脉检测性能。
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