We present a new algorithm to detect humans in still images utilizing covariance matrices as object descriptors. Since these descriptors do not lie on a vector space, well known machine learning techniques are not adequate to learn the classifiers. The space of d-dimensional nonsingular covariance matrices can be represented as a connected Riemannian manifold. We present a novel approach for classifying points lying on a Riemannian manifold by incorporating the a priori information about the geometry of the space. The algorithm is tested on INRIA human database where superior detection rates are observed over the previous approaches. 1
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
In video surveillance, classification of visual data can be very hard, due to the scarce resolution ...
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 ...
We present a new algorithm to detect pedestrians in still images utilizing covariance matrices as ob...
In surveillance applications, head and body orientation of people is of primary importance for asses...
The detection of humans in very complex scenes can be very challenging, due to the performance degra...
In this paper we propose a novel part-based framework for pedestrian detection. We model a human as...
In surveillance applications, head and body orientation of people is of primary importance for asses...
This paper addresses the issue of classification of human activities in still images. We propose a n...
This paper addresses the problem of human activity recognition in still images. We propose a novel m...
Military Operations in Urban Terrain (MOUT) require the capability to perceive and to analyse the si...
Boosting covariance data on Riemannian manifolds has proven to be a convenient strategy in a pedestr...
In video surveillance, classication of visual data can be very hard, due to the scarce resolution an...
For covariance-based image descriptors, taking into account the curvature of the corresponding featu...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
In video surveillance, classification of visual data can be very hard, due to the scarce resolution ...
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 ...
We present a new algorithm to detect pedestrians in still images utilizing covariance matrices as ob...
In surveillance applications, head and body orientation of people is of primary importance for asses...
The detection of humans in very complex scenes can be very challenging, due to the performance degra...
In this paper we propose a novel part-based framework for pedestrian detection. We model a human as...
In surveillance applications, head and body orientation of people is of primary importance for asses...
This paper addresses the issue of classification of human activities in still images. We propose a n...
This paper addresses the problem of human activity recognition in still images. We propose a novel m...
Military Operations in Urban Terrain (MOUT) require the capability to perceive and to analyse the si...
Boosting covariance data on Riemannian manifolds has proven to be a convenient strategy in a pedestr...
In video surveillance, classication of visual data can be very hard, due to the scarce resolution an...
For covariance-based image descriptors, taking into account the curvature of the corresponding featu...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
In video surveillance, classification of visual data can be very hard, due to the scarce resolution ...
Covariance matrices, known as symmetric positive definite (SPD) matrices, are usually regarded as po...