I. Introduction
Face is considered as one of the most important biometric traits as it is contactless which has gathered high demand ever since COVID 19 pandemic. Face recognition (FR) is defined as the method by which the face images from a digital or a video source is used to identify/verify people. Over the last few decades, there has been a significant increase in demand for facial recognition systems as they are non-intrusive, contactless and are a cheaper technology for authentication. They have also shown remarkable advantages in forensics, surveillance and immigration. However, face images captured in the visible spectrum are highly sensitive to illumination variations. This problem can be solved by capturing the images in near-infrared spectrum (NIR). It provides an effective, low cost and straightforward solution to increase the efficiency of face recognition in poor lighting or in complete darkness. The face images taken in both near-infrared and visible spectrum under various lighting conditions such as strong, weak and dark illuminations are shown in Fig. 1. It can be observed that the face images do not vary under near-infrared with strong, weak and dark lighting conditions. Hence, working on NIR face images is widely adopted in mobile devices, video surveillance (night vision CCTV camera) and user authentication applications to solve the illumination effect.
Visible and the corresponding NIR face images of the same subject in various (stong, weak and dark) illuminations from Oulu CASIA NIR VIS face dataset
Details of Nir Face DatasetsDataset | No. of Subjects | No. of Images |
---|---|---|
CASIA (NIR) 2.0 | 725 | 12,977 |
Oulu CASIA (NIR) facial expression | 80 | 32,004 |
PolyU NIR | 335 | 34,000 |
CBSR NIR | 197 | 3,940 |
HITSZ NIR | 50 | 500 |