In this paper, we present a novel approach for automatically learning a compact and yet discriminative appearance-based human action model. A video sequence is represented by a bag of spatiotemporal features called video-words by quantizing the extracted 3D interest points (cuboids) from the videos. Our proposed approach is able to automatically discover the optimal number of video-word clusters by utilizing Maximization of Mutual Information(MMI). Unlike the k-means algorithm, which is typically used to cluster spatiotemporal cuboids into video words based on their appearance similarity, MMI clustering further groups the video-words, which are highly correlated to some group of actions. To capture the structural information of the learnt o...
This paper presents a method for unsupervised learning and recognition of human actions in video. La...
This thesis presents a complete computational framework for discovering human actions and modeling h...
Thesis (Ph.D.)--University of Washington, 2014We propose a system to recognize both isolated and con...
In this paper, we present a novel approach for automatically learning a compact and yet discriminati...
With the availability of cheap video recording devices, fast internet access and huge storage spaces...
Efficient modeling of actions is critical for recognizing human actions. Recently, bag of video word...
We present a novel approach for discovering human interactions in videos. Activity understanding tec...
Efficient modeling of actions is critical for recognizing human actions. Recently, bag of video word...
An approach for human action retrieval in videos is pro-posed. Based on the volumetric analysis, act...
We present a novel model for human action categoriza-tion. A video sequence is represented as a coll...
This paper deals with human action classification by utilizing spatio-temporal (ST) co-occurrences b...
In this paper, we propose a novel action recognition framework. The method uses pictorial structures...
Representation of human actions as a sequence of human body movements or action attributes enables t...
Modern information processing relies on the axiom that high-dimensional data lie near low-dimensiona...
International audienceIt is well known that video cameras provide one of the richest, and most promi...
This paper presents a method for unsupervised learning and recognition of human actions in video. La...
This thesis presents a complete computational framework for discovering human actions and modeling h...
Thesis (Ph.D.)--University of Washington, 2014We propose a system to recognize both isolated and con...
In this paper, we present a novel approach for automatically learning a compact and yet discriminati...
With the availability of cheap video recording devices, fast internet access and huge storage spaces...
Efficient modeling of actions is critical for recognizing human actions. Recently, bag of video word...
We present a novel approach for discovering human interactions in videos. Activity understanding tec...
Efficient modeling of actions is critical for recognizing human actions. Recently, bag of video word...
An approach for human action retrieval in videos is pro-posed. Based on the volumetric analysis, act...
We present a novel model for human action categoriza-tion. A video sequence is represented as a coll...
This paper deals with human action classification by utilizing spatio-temporal (ST) co-occurrences b...
In this paper, we propose a novel action recognition framework. The method uses pictorial structures...
Representation of human actions as a sequence of human body movements or action attributes enables t...
Modern information processing relies on the axiom that high-dimensional data lie near low-dimensiona...
International audienceIt is well known that video cameras provide one of the richest, and most promi...
This paper presents a method for unsupervised learning and recognition of human actions in video. La...
This thesis presents a complete computational framework for discovering human actions and modeling h...
Thesis (Ph.D.)--University of Washington, 2014We propose a system to recognize both isolated and con...