In previous work [6, 9, 10], we advanced a new technique for direct visual matching of images for the purposes of face recognition and image retrieval, using a probabilistic measure of similarity based primarily on a Bayesian (MAP) analysis of image differences, leading to a "dual" basis similar to eigenfaces [13]. The performance advantage of this probabilistic matching technique over standard Euclidean nearest-neighbor eigenface matching was recently demonstrated using results from DARPA's 1996 "FERET" face recognition competition, in which this probabilistic matching algorithm was found to be the top performer. We have further developed a simple method of replacing the costly compution of nonlinear (online) Bayes...
Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the e...
Abstract. Bayesian subspace analysis (BSA) has been successfully applied in data mining and pattern ...
Quality of a pair of facial images is a strong indicator of the uncertainty in decision about identi...
In previous work [6, 9,10], we advanced a new technique for direct visual matching of images for the...
In previous work [6, 9, 10], we advanced a new technique for direct visual matching of images for th...
We propose a novel technique for direct visual matching of images for the purposes of face recogniti...
Probabilistic subspace similarity-based face matching is an efficient face recognition algorithm pro...
The ability to match faces correctly is crucial for efficient face recognition. Face-matchingalso pl...
The presence of occlusions in facial images is inevitable in unconstrained scenarios. However recogn...
Face recognition systems robust to major occlusions have wide applications ranging from consumer pro...
This project is to implement a 2D face recognition algorithm proposed in [2], which models the densi...
We study an object recognition system where Bayesian inference is used for estimating the probabilit...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
We propose subspace distance measures to analyze the similarity between intrapersonal face subspaces...
We compared face identification by humans and machines using images taken under a variety of uncontr...
Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the e...
Abstract. Bayesian subspace analysis (BSA) has been successfully applied in data mining and pattern ...
Quality of a pair of facial images is a strong indicator of the uncertainty in decision about identi...
In previous work [6, 9,10], we advanced a new technique for direct visual matching of images for the...
In previous work [6, 9, 10], we advanced a new technique for direct visual matching of images for th...
We propose a novel technique for direct visual matching of images for the purposes of face recogniti...
Probabilistic subspace similarity-based face matching is an efficient face recognition algorithm pro...
The ability to match faces correctly is crucial for efficient face recognition. Face-matchingalso pl...
The presence of occlusions in facial images is inevitable in unconstrained scenarios. However recogn...
Face recognition systems robust to major occlusions have wide applications ranging from consumer pro...
This project is to implement a 2D face recognition algorithm proposed in [2], which models the densi...
We study an object recognition system where Bayesian inference is used for estimating the probabilit...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
We propose subspace distance measures to analyze the similarity between intrapersonal face subspaces...
We compared face identification by humans and machines using images taken under a variety of uncontr...
Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the e...
Abstract. Bayesian subspace analysis (BSA) has been successfully applied in data mining and pattern ...
Quality of a pair of facial images is a strong indicator of the uncertainty in decision about identi...