Documents
Presentation Slides
MOTION TRANSFER-DRIVEN INTRA-CLASS DATA AUGMENTATION FOR FINGER VEIN RECOGNITION
- DOI:
- 10.60864/ndzx-sr23
- Citation Author(s):
- Submitted by:
- Xiu-Feng Huang
- Last updated:
- 6 June 2024 - 10:23am
- Document Type:
- Presentation Slides
- Document Year:
- 2024
- Event:
- Presenters:
- XIUFENG HUANG
- Paper Code:
- IFS-L4.5
- Categories:
- Log in to post comments
Finger vein recognition (FVR) has emerged as a secure biometric technique because of the confidentiality of vascular bio-information. Recently, deep learning-based FVR has gained increased popularity and achieved promising performance. However, the limited size of public vein datasets has caused overfitting issues and greatly limits the recognition performance. Although traditional data augmentation can partially alleviate this data shortage issue, it cannot capture the real finger posture variations due to the rigid label-preserving image transformations, bringing limited performance improvement. To address this issue, we propose a novel motion transfer (MT) model for finger vein image data augmentation via modeling the actual finger posture and rotational movements. The proposed model first utilizes a key point detector to extract the key point and pose map of the source and drive finger vein images. We then utilize a dense motion module to estimate the motion optical flow, which is fed to an image generation module for generating the image with the target pose. Experiments conducted on three public finger vein databases demonstrate that the proposed motion transfer model can generate realistic intra-class augmented samples and effectively improve the recognition accuracy.