AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify two face mismatch pairs in cases of incorrect decisions. The computational approach taken in this system is performed by the derivative of accumulated absolute difference between two faces unseen before. Unlike the traditional multi-dimensional distance measurement, the proposed algorithm also considers an increasing trend of accumulated absolute difference in respect to the Gaussian components. A Gaussian mixture model of bag-of-feature from training faces is also widely applicable to several biometric systems. Evaluation of the proposed algorithm is done on unconstrained environments using Labeled Face in the Wild (LFW) datasets. Experiments ...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
Abstract. In this paper we investigate how the use of computational statistical models, derived from...
It has been shown previously that systems based on local features and relatively complex generative ...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Abstract—Many face recognition algorithms use “distance-based ” methods: Feature vectors are extract...
Performance of face verification systems can be adversely affected by a number of different mismatch...
The image of a face varies with the illumination, pose, and facial expression, thus we say that a si...
We propose a novel probabilistic framework that combines information acquired from different facial...
This thesis proposes a robust Automatic Face Verification (AFV) system using Local Binary Patterns (...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
Face representation and matching are two essential issues in face verification task. Various approac...
This paper is focused on algorithmic issues for biometric face verification (i.e., given an image of...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the e...
In much of the literature devoted to face recognition, experiments are performed with controlled ima...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
Abstract. In this paper we investigate how the use of computational statistical models, derived from...
It has been shown previously that systems based on local features and relatively complex generative ...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Abstract—Many face recognition algorithms use “distance-based ” methods: Feature vectors are extract...
Performance of face verification systems can be adversely affected by a number of different mismatch...
The image of a face varies with the illumination, pose, and facial expression, thus we say that a si...
We propose a novel probabilistic framework that combines information acquired from different facial...
This thesis proposes a robust Automatic Face Verification (AFV) system using Local Binary Patterns (...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
Face representation and matching are two essential issues in face verification task. Various approac...
This paper is focused on algorithmic issues for biometric face verification (i.e., given an image of...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the e...
In much of the literature devoted to face recognition, experiments are performed with controlled ima...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
Abstract. In this paper we investigate how the use of computational statistical models, derived from...
It has been shown previously that systems based on local features and relatively complex generative ...