This paper considers the recognition of realistic human actions in videos based on spatio-temporal interest points (STIPs). Existing STIP-based action recognition approaches operate on intensity representations of the image data. Because of this, these approaches are sensitive to disturbing photometric phenomena, such as shadows and highlights. In addition, valuable information is neglected by discarding chromaticity from the photometric representation. These issues are addressed by color STIPs. Color STIPs are multichannel reformulations of STIP detectors and descriptors, for which we consider a number of chromatic and invariant representations derived from the opponent color space. Color STIPs are shown to outperform their intensity-based...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
Human Action Recognition Human action recognition is an important topic of computer vision research ...
This paper considers the problem of detecting actions from clut-tered videos. Compared with the clas...
This paper is concerned with recognizing realistic human actions in videos based on spatio-temporal ...
Despite the recent developments in spatiotemporal local features for action recognition in video seq...
To produce video representation that separates it foreground and history without condition, we advis...
Despite the recent developments in spatiotemporal local fea-tures for action recognition in video se...
<p> Recently, increasing attention has been paid to the detection of spatio-temporal interest point...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
Human action recognition is a topic widely studied over time, using numerous techniques and methods ...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
AbstractReal-time Human action classification in complex scenes has applications in various domains ...
Abstract. In this paper, we propose a new spatio-temporal descriptor called ST-SURF. The latter is b...
Human action recognition is a topic widely studied over time, using numerous techniques and methods ...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
Human Action Recognition Human action recognition is an important topic of computer vision research ...
This paper considers the problem of detecting actions from clut-tered videos. Compared with the clas...
This paper is concerned with recognizing realistic human actions in videos based on spatio-temporal ...
Despite the recent developments in spatiotemporal local features for action recognition in video seq...
To produce video representation that separates it foreground and history without condition, we advis...
Despite the recent developments in spatiotemporal local fea-tures for action recognition in video se...
<p> Recently, increasing attention has been paid to the detection of spatio-temporal interest point...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
Human action recognition is a topic widely studied over time, using numerous techniques and methods ...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
AbstractReal-time Human action classification in complex scenes has applications in various domains ...
Abstract. In this paper, we propose a new spatio-temporal descriptor called ST-SURF. The latter is b...
Human action recognition is a topic widely studied over time, using numerous techniques and methods ...
Human action is a visually complex phenomenon. Visual representation, analysis and recognition of hu...
Human Action Recognition Human action recognition is an important topic of computer vision research ...
This paper considers the problem of detecting actions from clut-tered videos. Compared with the clas...