This paper proposes three techniques for person independent action classification in compressed MPEG video. The features used are based on motion vectors, obtained by partial decoding of the MPEG video. The features proposed are projected ID, 2D polar and 2D Cartesian. The feature vectors are fed to Hidden Markov Model (HMM) for classification of actions. Totally seven actions were trained with distinct HMM for classification. Recognition results of more than 90% have been achieved. This work is significant in the context of emerging MPEG-7 standard for video indexing and retrieval
Large variations in human actions lead to major challenges in computer vision research. Several algo...
Hidden Markov models (HMMs) provide joint segmentation and classification of sequential data by effi...
This PhD research has proposed new machine learning techniques to improve human action recognition b...
This paper proposes three techniques for person independent action classification in compressed MPEG...
This paper proposes three techniques of feature extraction for person independent action classificat...
In this paper we present a system for classifying various human actions in compressed domain video f...
Generally, the object-based prominent motion features haven’t been generated to analyze the human ac...
This paper discusses a novel high-speed approach for human action recognition in H.264/AVC compresse...
Abstract—We present a compressed domain scheme that is able to recognize and localize actions at hig...
We propose an action classification algorithm which uses Locality-constrained Linear Coding (LLC) to...
Motion is an important cue for video understanding and is widely used in many semantic video analyse...
This paper discusses a novel high-speed approach for human action recognition in H. 264/AVC compress...
Abstract—We propose an action classification algorithm which uses Locality-constrained Linear Coding...
This contribution addresses the approach to recognize single and multiple human actions in video str...
Large variations in human actions lead to major challenges in computer vision research. Several algo...
Large variations in human actions lead to major challenges in computer vision research. Several algo...
Hidden Markov models (HMMs) provide joint segmentation and classification of sequential data by effi...
This PhD research has proposed new machine learning techniques to improve human action recognition b...
This paper proposes three techniques for person independent action classification in compressed MPEG...
This paper proposes three techniques of feature extraction for person independent action classificat...
In this paper we present a system for classifying various human actions in compressed domain video f...
Generally, the object-based prominent motion features haven’t been generated to analyze the human ac...
This paper discusses a novel high-speed approach for human action recognition in H.264/AVC compresse...
Abstract—We present a compressed domain scheme that is able to recognize and localize actions at hig...
We propose an action classification algorithm which uses Locality-constrained Linear Coding (LLC) to...
Motion is an important cue for video understanding and is widely used in many semantic video analyse...
This paper discusses a novel high-speed approach for human action recognition in H. 264/AVC compress...
Abstract—We propose an action classification algorithm which uses Locality-constrained Linear Coding...
This contribution addresses the approach to recognize single and multiple human actions in video str...
Large variations in human actions lead to major challenges in computer vision research. Several algo...
Large variations in human actions lead to major challenges in computer vision research. Several algo...
Hidden Markov models (HMMs) provide joint segmentation and classification of sequential data by effi...
This PhD research has proposed new machine learning techniques to improve human action recognition b...