Face Matching Between Near Infrared and Visible Light Images
نویسندگان
چکیده
In many applications, such as E-Passport and driver’s license, the enrollment of face templates is done using visible light (VIS) face images. Such images are normally acquired in controlled environment where the lighting is approximately frontal. However, Authentication is done in variable lighting conditions. Matching of faces in VIS images taken in different lighting conditions is still a big challenge. A recent development in near infrared (NIR) image based face recognition [1] has well overcome the difficulty arising from lighting changes. However, it requires that enrollment face images be acquired using NIR as well. In this paper, we present a new problem, that of matching a face in an NIR image against one in a VIS images, and propose a solution to it. The work is aimed to develop a new solution for meeting the accuracy requirement of face-based biometric recognition, by taking advantages of the recent NIR face technology while allowing the use of existing VIS face photos as gallery templates. Face recognition is done by matching an NIR probe face against a VIS gallery face. Based on an analysis of properties of NIR and VIS face images, we propose a learningbased approach for the different modality matching. A mechanism of correlation between NIR and VIS faces is learned from NIR→VIS face pairs, and the learned correlation is used to evaluate similarity between an NIR face and a VIS face. We provide preliminary results of NIR→VIS face matching for recognition under different illumination conditions. The results demonstrate advantages of NIR→VIS matching over VIS→VIS matching.
منابع مشابه
Comparison of Near Infrared And Visible Image Fusion Methods
Visible images are usually merged with midrange infrared images for surveillance enhancement or for non visual tasks like face recognition. The IR images contain information that is not the same as in the visible range images. We test fusion of near infrared images with visible spectrum images for detail enhancement and contrast highlighting using several quality metrics. It is shown that compu...
متن کاملToward hyperspectral face recognition
Face recognition continues to meet significant challenges in reaching accurate results and still remains one of the activities where humans outperform technology. An attractive approach in improving face identification is provided by the fusion of multiple imaging sources such as visible and infrared images. Hyperspectral data, i.e. images collected over hundreds of narrow contiguous light spec...
متن کاملNighttime face recognition at large standoff: Cross-distance and cross-spectral matching
Face recognition in surveillance systems is important for security applications, especially in nighttime scenarios when the subject is far away from the camera. However, due to the face image quality degradation caused by large camera standoff and low illuminance, nighttime face recognition at large standoff is challenging. In this paper, we report a system that is capable of collecting face im...
متن کاملEvaluating the Efficiency of a Night-Time, Middle-Range Infrared Sensor for Applications in Human Detection and Recognition
In law enforcement and security applications, the acquisition of face images is critical in producing key trace evidence for the successful identification of potential threats. In this work we, first, use a near infrared (NIR) sensor designed with the capability to acquire images at middle-range stand-off distances at night. Then, we determine the maximum stand-off distance where face recogniti...
متن کاملHeterogeneous Face Recognition from Local Structures of Normalized Appearance
Heterogeneous face images come from different lighting conditions or different imaging devices, such as visible light (VIS) and near infrared (NIR) based. Because heterogeneous face images can have different skin spectra-optical properties, direct appearance based matching is no longer appropriate for solving the problem. Hence we need to find facial features common in heterogeneous images. For...
متن کامل