Human action classification, which is vital for content-based video retrieval and human-machine interaction, finds problem in distinguishing similar actions. Previous works typically detect spatial-temporal interest points (STIPs) from action sequences and then adopt bag-of-visual words (BoVW) model to describe actions as numerical statistics of STIPs. Despite the robustness of BoVW, this model ignores the spatial-temporal layout of STIPs, leading to misclassification among different types of actions with similar numerical statistics of STIPs. Motivated by this, a time-ordered feature is designed to describe the temporal distribution of STIPs, which contains complementary structural information to traditional BoVW model. Moreover, a tempora...
Human action recognition from video input has seen much interest over the last decade. In recent yea...
Human actions are spatio-temporal patterns. A popular representation is to describe the action by fe...
International audienceLocal space-time features have recently become a popular video representation ...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
AbstractReal-time Human action classification in complex scenes has applications in various domains ...
We present a novel model for human action categoriza-tion. A video sequence is represented as a coll...
AbstractRecently, approaches utilizing spatial-temporal features to form Bag-of-Words (BoWs) models ...
We investigate how human action recognition can be improved by considering spatio-temporal layout of...
The human action classification task is a widely researched topic and is still an open problem. Many...
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...
The bag-of-words approach with local spatio-temporal features have become a popular video representa...
The human action classification task is a widely researched topic and is still an open problem. Many...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
This paper considers the problem of detecting actions from clut-tered videos. Compared with the clas...
Human action recognition from video input has seen much interest over the last decade. In recent yea...
Human actions are spatio-temporal patterns. A popular representation is to describe the action by fe...
International audienceLocal space-time features have recently become a popular video representation ...
Human action recognition is challenging mainly due to intro-variety, inter-ambiguity and clutter bac...
AbstractReal-time Human action classification in complex scenes has applications in various domains ...
We present a novel model for human action categoriza-tion. A video sequence is represented as a coll...
AbstractRecently, approaches utilizing spatial-temporal features to form Bag-of-Words (BoWs) models ...
We investigate how human action recognition can be improved by considering spatio-temporal layout of...
The human action classification task is a widely researched topic and is still an open problem. Many...
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...
The bag-of-words approach with local spatio-temporal features have become a popular video representa...
The human action classification task is a widely researched topic and is still an open problem. Many...
Graphical models have been shown to provide a natural framework for modelling high level action tran...
This paper considers the problem of detecting actions from clut-tered videos. Compared with the clas...
Human action recognition from video input has seen much interest over the last decade. In recent yea...
Human actions are spatio-temporal patterns. A popular representation is to describe the action by fe...
International audienceLocal space-time features have recently become a popular video representation ...