Abstract—We present a learning method for classification using multiple manifold-valued features. Manifold techniques are becoming increasingly popular in computer vision since Riemannian geometry often comes up as a natural model for many descriptors encountered in different branches of computer vision. We propose a feature combination and selection method that optimally combines descriptors lying on different manifolds while respecting the Riemannian geometry of each underlying manifold. We use our method to improve object recognition by combining HOG [1] and Region Covariance [2] descriptors that reside on two different manifolds. To this end, we propose a kernel on the n-dimensional unit sphere and prove its positive definiteness. Our e...
Several descriptors have been proposed in the past for 3D shape analysis, yet none of them achieves ...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...
Recognizing objects from different viewpoints is a challenging task. One approach for handling this ...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
The importance of wild video based image set recognition is becoming monotonically increasing. Howev...
Object recognition is a key precursory challenge in the fields of object manipulation and robotic/AI...
We tackle the problemof extracting explicit discriminative feature representation for manifold featu...
Covariance matrices, known as symmetric positive definite (SPD) matrices, are usually regarded as po...
We present a new algorithm to detect humans in still images utilizing covariance matrices as object ...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
Object recognition is a key precursory challenge in the fields of object manipulation and robotic/AI...
Perceptual manifolds arise when a neural population responds to an ensemble of sensory signals assoc...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Several descriptors have been proposed in the past for 3D shape analysis, yet none of them achieves ...
Several descriptors have been proposed in the past for 3D shape analysis, yet none of them achieves ...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...
Recognizing objects from different viewpoints is a challenging task. One approach for handling this ...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
The importance of wild video based image set recognition is becoming monotonically increasing. Howev...
Object recognition is a key precursory challenge in the fields of object manipulation and robotic/AI...
We tackle the problemof extracting explicit discriminative feature representation for manifold featu...
Covariance matrices, known as symmetric positive definite (SPD) matrices, are usually regarded as po...
We present a new algorithm to detect humans in still images utilizing covariance matrices as object ...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
Object recognition is a key precursory challenge in the fields of object manipulation and robotic/AI...
Perceptual manifolds arise when a neural population responds to an ensemble of sensory signals assoc...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Several descriptors have been proposed in the past for 3D shape analysis, yet none of them achieves ...
Several descriptors have been proposed in the past for 3D shape analysis, yet none of them achieves ...
The field of manifold learning provides powerful tools for parameterizing high-dimensional data poin...
Recognizing objects from different viewpoints is a challenging task. One approach for handling this ...