In this paper, we deal with the estimation of body and head poses (i.e orientations) in surveillance videos, and we make three main contributions. First, we address this issue as a joint model adaptation problem in a semi-supervised framework. Second, we propose to leverage the adaptation on multiple information sources (external labeled datasets, weak labels provided by the motion direction, data structure manifold), and in particular, on the coupling at the output level of the head and body classifiers, accounting for the re-striction in the configurations that the head and body pose can jointly take. Third, we propose a kernel-formulation of this principle that can be efficiently solved using a global optimization scheme. The method is a...
Many computer vision tasks are more difficult when tackled without contextual information. For examp...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
In this paper we present a visual particle filter for jointly tracking the position of a person and...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
Head pose classification from surveillance images acquired with distant, large field-of-view cameras...
Head pose estimation is a sensitive topic in video surveillance/smart ambient scenarios since head r...
Head pose estimation is a sensitive topic in video surveillance/smart ambient scenarios since head r...
We present an algorithm for estimation of head orientation, given cropped images of a subject’s head...
We propose an appearance-based head pose estimation method that can be automatically adapted to indi...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial ...
International audienceIn this work, we address a method that is able to track simultaneously 3D head...
Despite many attempts in the last few years, automatic analysis of social scenes captured by wide-an...
Face recognition (FR) is employed in several video surveillance applications to determine if facial ...
[[abstract]]Although several algorithms have been proposed for facial model adaptation from image se...
Many computer vision tasks are more difficult when tackled without contextual information. For examp...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
In this paper we present a visual particle filter for jointly tracking the position of a person and...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
Head pose classification from surveillance images acquired with distant, large field-of-view cameras...
Head pose estimation is a sensitive topic in video surveillance/smart ambient scenarios since head r...
Head pose estimation is a sensitive topic in video surveillance/smart ambient scenarios since head r...
We present an algorithm for estimation of head orientation, given cropped images of a subject’s head...
We propose an appearance-based head pose estimation method that can be automatically adapted to indi...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial ...
International audienceIn this work, we address a method that is able to track simultaneously 3D head...
Despite many attempts in the last few years, automatic analysis of social scenes captured by wide-an...
Face recognition (FR) is employed in several video surveillance applications to determine if facial ...
[[abstract]]Although several algorithms have been proposed for facial model adaptation from image se...
Many computer vision tasks are more difficult when tackled without contextual information. For examp...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
In this paper we present a visual particle filter for jointly tracking the position of a person and...