This paper considers the problem of detecting actions from clut-tered videos. Compared with the classical action recognition problem, this paper aims to estimate not only the scene category of a given video sequence, but also the spatial-temporal loca-tions of the action instances. In recent years, many feature ex-traction schemes have been designed to describe various aspects of actions. However, due to the difficulty of action detection, e.g., the cluttered background and potential occlusions, a sin-gle type of features cannot solve the action detection problems perfectly in cluttered videos. In this paper, we attack the detec-tion problem by combining multiple Spatial-Temporal Interest Point (STIP) features, which detect salient patches ...
Human action recognition is valuable for numerous practical applications, e.g., gaming, video survei...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
We detect interest points in temporal-spacial space and use the local feature plus their positions t...
This chapter addresses the problem of action detection from cluttered videos. In recent years, many ...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
Abstract—Actions are spatio-temporal patterns. Similar to the slid-ing window-based object detection...
Actions are spatiotemporal patterns. Similar to the sliding window-based object detection, action de...
<p> Recently, increasing attention has been paid to the detection of spatio-temporal interest point...
A common approach to human action recognition from still images consists in computing local descript...
Human action classification, which is vital for content-based video retrieval and human-machine inte...
We detect interest points in temporal-spacial space and use the local feature plus their positions t...
Detecting and recognizing human actions is of great importance to video analytics due to its numerou...
This paper presents a generic method for recognising and localising human actions in video based sol...
This paper presents a generic method for recognising and localising human actions in video based sol...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
Human action recognition is valuable for numerous practical applications, e.g., gaming, video survei...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
We detect interest points in temporal-spacial space and use the local feature plus their positions t...
This chapter addresses the problem of action detection from cluttered videos. In recent years, many ...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
Abstract—Actions are spatio-temporal patterns. Similar to the slid-ing window-based object detection...
Actions are spatiotemporal patterns. Similar to the sliding window-based object detection, action de...
<p> Recently, increasing attention has been paid to the detection of spatio-temporal interest point...
A common approach to human action recognition from still images consists in computing local descript...
Human action classification, which is vital for content-based video retrieval and human-machine inte...
We detect interest points in temporal-spacial space and use the local feature plus their positions t...
Detecting and recognizing human actions is of great importance to video analytics due to its numerou...
This paper presents a generic method for recognising and localising human actions in video based sol...
This paper presents a generic method for recognising and localising human actions in video based sol...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
Human action recognition is valuable for numerous practical applications, e.g., gaming, video survei...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
We detect interest points in temporal-spacial space and use the local feature plus their positions t...