In this paper, we propose a discriminative approach for retrieval of video shots characterized by a sequential structure. The task of retrieving shots similar in content to a few positive example shots is more close to a binary classification problem. Hence, this task can be solved by a discriminative learning approach. For a content-based retrieval task the twin characteristics of rare positive example occurrence and a sequential structure in the positive examples make it attractive for us to use a learning approach based on a generative model like HMM. To make use of the positive aspects of both discriminative and generative models, we derive Fisher and Modified score kernels for a Continuous HMM and incorporate them into SVM classificati...
In this thesis we have proposed novel methods for video segmentation and representation that are bas...
The organization of video information for video databases requires segmentation of a video into its ...
The contribution of this paper is a search engine that recognizes and describes 48 human actions in ...
Abstract—We present a novel technique for image driven shot retrieval in video data. Specifically, g...
Video retrieval and indexing research aims to efficiently and effectively manage very large video da...
International audienceThe actual generation of video search engines offers low-level abstractions of...
We investigate the application of a variety of content-based image retrieval techniques to the probl...
Abstract: This paper presents a novel method for efficient key frame extraction from video shot repr...
This paper proposes a novel framework for Relevance Feedback based on the Fisher Kernel (FK). Specif...
We evaluate the application of feature-vector based image retrieval methods to the problem of video ...
The main challenges of multimedia data retrieval lie in the effective mapping between low-level feat...
Human action recognition can be considered as the process of labelling the videos with the corre-\ud...
The approach of using bag-of-words (BoW) or variants is ubiquitous in computer vision and related fi...
University of Technology Sydney. Faculty of Engineering and Information Technology.Cinematographic s...
In this paper we propose a method for recognition of adult video based on support vector machine (SV...
In this thesis we have proposed novel methods for video segmentation and representation that are bas...
The organization of video information for video databases requires segmentation of a video into its ...
The contribution of this paper is a search engine that recognizes and describes 48 human actions in ...
Abstract—We present a novel technique for image driven shot retrieval in video data. Specifically, g...
Video retrieval and indexing research aims to efficiently and effectively manage very large video da...
International audienceThe actual generation of video search engines offers low-level abstractions of...
We investigate the application of a variety of content-based image retrieval techniques to the probl...
Abstract: This paper presents a novel method for efficient key frame extraction from video shot repr...
This paper proposes a novel framework for Relevance Feedback based on the Fisher Kernel (FK). Specif...
We evaluate the application of feature-vector based image retrieval methods to the problem of video ...
The main challenges of multimedia data retrieval lie in the effective mapping between low-level feat...
Human action recognition can be considered as the process of labelling the videos with the corre-\ud...
The approach of using bag-of-words (BoW) or variants is ubiquitous in computer vision and related fi...
University of Technology Sydney. Faculty of Engineering and Information Technology.Cinematographic s...
In this paper we propose a method for recognition of adult video based on support vector machine (SV...
In this thesis we have proposed novel methods for video segmentation and representation that are bas...
The organization of video information for video databases requires segmentation of a video into its ...
The contribution of this paper is a search engine that recognizes and describes 48 human actions in ...