We investigate the recognition of actions "in the wild"’ using 3D motion information. The lack of control over (and knowledge of) the camera configuration, exacerbates this already challenging task, by introducing systematic projective inconsistencies between 3D motion fields, hugely increasing intra-class variance. By introducing a robust, sequence based, stereo calibration technique, we reduce these inconsistencies from fully projective to a simple similarity transform. We then introduce motion encoding techniques which provide the necessary scale invariance, along with additional invariances to changes in camera viewpoint. On the recent Hollywood 3D natural action recognition dataset, we show improvements of 40% over previous state-of-th...
A moving plane observed by a fixed camera induces a fundamental matrix F across multiple frames, whe...
a) b)c) d)-trajectories DB e) Figure 1: Our novel approach to cross-view action recognition. a) We b...
In this paper, we address the problem of learning compact, view-independent, realistic 3D models of ...
Abstract. We investigate the recognition of actions “in the wild ” using 3D motion information. The ...
Abstract. We investigate the recognition of actions “in the wild ” using 3D mo-tion information. The...
The aim of this thesis, is to develop estimation and encoding techniques for 3D information, which a...
The aim of this thesis, is to develop estimation and encoding techniques for 3D information, which a...
Action recognition in unconstrained situations is a difficult task, suffering from massive intra-cla...
Action recognition in unconstrained situations is a diffi-cult task, suffering from massive intra-cl...
Action recognition “in the wild” is extremely challenging, particularly when complex 3D actions are ...
Action recognition from 3d pose data has gained increasing attention since the data is readily avail...
We demonstrate how a large collection of unlabeled motion examples can help us in understanding huma...
Abstract. Action recognition from 3d pose data has gained increasing attention since the data is rea...
Although human action recognition has been the subject of much research in the past, the issue of vi...
Human action recognition has emerged as an important field in the computer vision community due to i...
A moving plane observed by a fixed camera induces a fundamental matrix F across multiple frames, whe...
a) b)c) d)-trajectories DB e) Figure 1: Our novel approach to cross-view action recognition. a) We b...
In this paper, we address the problem of learning compact, view-independent, realistic 3D models of ...
Abstract. We investigate the recognition of actions “in the wild ” using 3D motion information. The ...
Abstract. We investigate the recognition of actions “in the wild ” using 3D mo-tion information. The...
The aim of this thesis, is to develop estimation and encoding techniques for 3D information, which a...
The aim of this thesis, is to develop estimation and encoding techniques for 3D information, which a...
Action recognition in unconstrained situations is a difficult task, suffering from massive intra-cla...
Action recognition in unconstrained situations is a diffi-cult task, suffering from massive intra-cl...
Action recognition “in the wild” is extremely challenging, particularly when complex 3D actions are ...
Action recognition from 3d pose data has gained increasing attention since the data is readily avail...
We demonstrate how a large collection of unlabeled motion examples can help us in understanding huma...
Abstract. Action recognition from 3d pose data has gained increasing attention since the data is rea...
Although human action recognition has been the subject of much research in the past, the issue of vi...
Human action recognition has emerged as an important field in the computer vision community due to i...
A moving plane observed by a fixed camera induces a fundamental matrix F across multiple frames, whe...
a) b)c) d)-trajectories DB e) Figure 1: Our novel approach to cross-view action recognition. a) We b...
In this paper, we address the problem of learning compact, view-independent, realistic 3D models of ...