ABSTRACT We propose a new graph-based data structure, called Spatio Temporal Region Graph (STRG) which can represent the content of video sequence. Unlike existing ones which consider mainly spatial information in the frame level of video, the proposed STRG is able to formulate its temporal information in the video level additionally. After an STRG is constructed from a given video sequence, it is decomposed into its subgraphs called Object Graphs (OGs), which represent the temporal characteristics of video objects. For unsupervised learning, we cluster similar OGs into a group, in which we need to match two OGs. For this graph matching, we introduce a new distance measure, called Extended Graph Edit Distance (EGED), which can handle the te...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper proposes a new approach for hot event detection and summarization of news videos. The app...
Abstract—This paper shows how data mining and in partic-ular graph mining and clustering can help to...
In this work, we propose new graph-based data model and indexing to organize and manage video data. ...
In this paper, we propose new graph-based data structure and indexing to organize and retrieve video...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
In this paper, we address the problem of querying video shots based on content-based matching. Our p...
E#cient video browsing requires indexing of videos so that the users can quickly locate the segments...
Images and videos can be naturally represented by graphs, with spatial graphs for images and spatiot...
Many computer vision problems, such as object classification, motion estimation or shape registratio...
An efficient video retrieval system is essential to search relevant video contents from a large set ...
This paper proposes a new approach for hot event detection and summarization of news videos. The app...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper proposes a new approach for hot event detection and summarization of news videos. The app...
Abstract—This paper shows how data mining and in partic-ular graph mining and clustering can help to...
In this work, we propose new graph-based data model and indexing to organize and manage video data. ...
In this paper, we propose new graph-based data structure and indexing to organize and retrieve video...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
In this paper, we address the problem of querying video shots based on content-based matching. Our p...
E#cient video browsing requires indexing of videos so that the users can quickly locate the segments...
Images and videos can be naturally represented by graphs, with spatial graphs for images and spatiot...
Many computer vision problems, such as object classification, motion estimation or shape registratio...
An efficient video retrieval system is essential to search relevant video contents from a large set ...
This paper proposes a new approach for hot event detection and summarization of news videos. The app...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper presents a method to perform a high-level segmentation of videos into scenes. A scene can...
This paper proposes a new approach for hot event detection and summarization of news videos. The app...
Abstract—This paper shows how data mining and in partic-ular graph mining and clustering can help to...