It is a great challenge to perform high level recognition tasks on videos that are poor in quality. In this paper, we propose a new spatio-temporal mid-level (STEM) feature bank for recognizing human actions in low quality videos. The feature bank comprises of a trio of local spatio-temporal features, i.e. shape, motion and textures, which respectively encode structural, dynamic and statistical information in video. These features are encoded into mid-level representations and aggregated to construct STEM. Based on the recent binarized statistical image feature (BSIF), we also design a new spatiotemporal textural feature that extracts discriminately from 3D salient patches. Extensive experiments on the poor quality versions/subsets of the K...
Abstract—This paper provides a unified framework for the interrelated topics of action spotting, the...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
Abstract—Shape, motion and texture features have recently gained much popularity in their use for hu...
Human action recognition is an increasingly matured field of study in the recent years, owing to its...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
How should a video be represented? We propose a new representation for videos based on mid-level dis...
In this paper, we propose a systematic framework for action recognition in unconstrained amateur vid...
A major emerging challenge is how to protect people\u27s privacy as cameras and computer vision are ...
Local spatio-temporal features have been shown to be effective and robust in order to represent simp...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
Human action recognition, as one of the most important topics in computer vision, has been extensive...
Several spatiotemporal feature point detectors have been recently used in video analysis for action ...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Abstract—This paper provides a unified framework for the interrelated topics of action spotting, the...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
Abstract—Shape, motion and texture features have recently gained much popularity in their use for hu...
Human action recognition is an increasingly matured field of study in the recent years, owing to its...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
How should a video be represented? We propose a new representation for videos based on mid-level dis...
In this paper, we propose a systematic framework for action recognition in unconstrained amateur vid...
A major emerging challenge is how to protect people\u27s privacy as cameras and computer vision are ...
Local spatio-temporal features have been shown to be effective and robust in order to represent simp...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
Human action recognition, as one of the most important topics in computer vision, has been extensive...
Several spatiotemporal feature point detectors have been recently used in video analysis for action ...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Abstract—This paper provides a unified framework for the interrelated topics of action spotting, the...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...