Abstract:
Face recognition in images is an active area of interest among the computer vision researchers. However, recognizing human face in an unconstrained environment, is a rela...Show MoreMetadata
Abstract:
Face recognition in images is an active area of interest among the computer vision researchers. However, recognizing human face in an unconstrained environment, is a relatively less-explored area of research. Multiple face recognition in unconstrained environment is a challenging task, due to the variation of view-point, scale, pose, illumination and expression of the face images. Partial occlusion of faces makes the recognition task even more challenging. The contribution of this paper is two-folds: introducing a challenging multi-face dataset (i.e., IIITS_MFace Dataset) for face recognition in unconstrained environment and evaluating the performance of state-of-the-art hand-designed and deep learning based face descriptors on the dataset. The proposed IIITS_MFace dataset contains faces with challenges like pose variation, occlusion, mask, spectacle, expressions, change of illumination, etc. We experiment with several state-of-the-art face descriptors, including recent deep learning based face descriptors like VGGFace, and compare with the existing benchmark face datasets. Results of the experiments clearly show that the difficulty level of the proposed dataset is much higher compared to the benchmark datasets.
Published in: 2018 15th International Conference on Control, Automation, Robotics and Vision (ICARCV)
Date of Conference: 18-21 November 2018
Date Added to IEEE Xplore: 20 December 2018
ISBN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Face ,
- Face recognition ,
- Probes ,
- Lighting ,
- Task analysis ,
- Databases ,
- Computer vision
- Index Terms
- Face Recognition ,
- Challenging Dataset ,
- Face Recognition Datasets ,
- Robust Face Recognition ,
- Deep Learning ,
- Computer Vision ,
- Image Recognition ,
- Face Images ,
- Illumination Changes ,
- Face Dataset ,
- Computer Vision Research ,
- Multiple Faces ,
- Unconstrained Environment ,
- Mobile Phone ,
- Distancing Measures ,
- Local Patterns ,
- Manhattan Distance ,
- Local Gradient ,
- Local Descriptors ,
- Image Descriptors ,
- Face Detection ,
- Gallery Set ,
- Earth Mover’s Distance ,
- Face Recognition Task ,
- Variations In Light Intensity
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Face ,
- Face recognition ,
- Probes ,
- Lighting ,
- Task analysis ,
- Databases ,
- Computer vision
- Index Terms
- Face Recognition ,
- Challenging Dataset ,
- Face Recognition Datasets ,
- Robust Face Recognition ,
- Deep Learning ,
- Computer Vision ,
- Image Recognition ,
- Face Images ,
- Illumination Changes ,
- Face Dataset ,
- Computer Vision Research ,
- Multiple Faces ,
- Unconstrained Environment ,
- Mobile Phone ,
- Distancing Measures ,
- Local Patterns ,
- Manhattan Distance ,
- Local Gradient ,
- Local Descriptors ,
- Image Descriptors ,
- Face Detection ,
- Gallery Set ,
- Earth Mover’s Distance ,
- Face Recognition Task ,
- Variations In Light Intensity
- Author Keywords