Pose variation remains to be a major challenge for real-world face recognition. We approach this problem through a probabilistic elastic matching method. We take a part based representation by extracting local features (e.g., LBP or SIFT) from densely sampled multi-scale image patches. By augmenting each feature with its location, a Gaussian mixture model (GMM) is trained to capture the spatial-appearance distribution of all face images in the training corpus. Each mixture component of the GMM is confined to be a spherical Gaussian to balance the influence of the appearance and the location terms. Each Gaussian component builds correspondence of a pair of features to be matched between two faces/face tracks. For face verification, we train ...
The classical way of attempting to solve the face (or object) recognition problem is by using large ...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
In the framework of a face Verification System using local feature and a Gaussian Mixture Model base...
Motivated by the success of parts based representations in face detection we have attempted to addre...
Motivated by the success of parts based representations in face detection we have attempted to addre...
It has been shown previously that systems based on local features and relatively complex generative ...
International audienceThe use of hypothesis verification is recurrent in the model-based recognition...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Abstract—Part-based methods have seen popular applica-tions for face verification in the wild, since...
We address the pose mismatch problem which can occur in face verification systems that have only a s...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
It has been previously demonstrated that systems based on local features and relatively complex stat...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
Abstract—Face recognition algorithms perform very unreliably when the pose of the probe face is diff...
This thesis demonstrates techniques for improved biometric image matching by mitigating image distor...
The classical way of attempting to solve the face (or object) recognition problem is by using large ...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
In the framework of a face Verification System using local feature and a Gaussian Mixture Model base...
Motivated by the success of parts based representations in face detection we have attempted to addre...
Motivated by the success of parts based representations in face detection we have attempted to addre...
It has been shown previously that systems based on local features and relatively complex generative ...
International audienceThe use of hypothesis verification is recurrent in the model-based recognition...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Abstract—Part-based methods have seen popular applica-tions for face verification in the wild, since...
We address the pose mismatch problem which can occur in face verification systems that have only a s...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
It has been previously demonstrated that systems based on local features and relatively complex stat...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
Abstract—Face recognition algorithms perform very unreliably when the pose of the probe face is diff...
This thesis demonstrates techniques for improved biometric image matching by mitigating image distor...
The classical way of attempting to solve the face (or object) recognition problem is by using large ...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
In the framework of a face Verification System using local feature and a Gaussian Mixture Model base...