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Face recognition using elastic local reconstruction based on a single face image
Authors:Xudong Xie  Kin-Man Lam
Affiliation:2. The Operation Eyesight Universal Institute for Eye Cancer, L.V. Prasad Eye Institute, Hyderabad, India.;1. Forest Management and Development, Swiss Federal Institute of Technology (ETH), Zurich, Switzerland;2. Madagascar Wildlife Conservation, Ambatondrazaka, Madagascar;3. Forêts et Sociétés, CIRAD, Montpellier, France;1. Seoul National University, 1 Gwanakro, Gwanak-gu, 151-744 Seoul, Republic of Korea;2. Seoul National University of Science & Technology, 232 Gongneung ro, Nowon-gu, 139-743 Seoul, Republic of Korea;1. Department of Development Studies, College of Humanities and Development Studies (COHD), China Agricultural University, PR China;2. Department of Rural Sociology, Wageningen University, 6706 KN Wageningen, The Netherlands;3. Department of Development Studies, College of Humanities and Development Studies (COHD), China Agricultural University, Beijing 100193, PR China;4. Department of Sociology, College of Humanities and Development Studies (COHD), China Agricultural University, Beijing 100193, PR China
Abstract:In this paper, we propose a new face recognition algorithm based on a single frontal-view image for each face subject, which considers the effect of the face manifold structure. To compare two near-frontal face images, each face is considered a combination of a sequence of local image blocks. Each of the image blocks of one image can be reconstructed according to the corresponding local image block of the other face image. Then an elastic local reconstruction (ELR) method is proposed to measure the similarities between the image block pairs in order to measure the difference between the two face images. Our algorithm not only benefits from the face manifold structure, in terms of being robust to various image variations, but also is computationally simple because there is no need to build the face manifold. We evaluate the performance of our proposed face recognition algorithm with the use of different databases, which are produced under various conditions, e.g. lightings, expressions, perspectives, with/without glasses and occlusions. Consistent and promising experimental results were obtained, which show that our algorithm can greatly improve the recognition rates under all the different conditions.
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