Efficiently and effectively identifying similar videos is an important and nontrivial problem in content-based video retrieval. This paper proposes a subspace symbolization approach, namely SUDS, for content-based retrieval on very large video databases. The novelty of SUDS is that it explores the data distribution in subspaces to build a visual dictionary with which the videos are processed by deriving the string matching techniques with two-step data simplification. Specifically, we first propose an adaptive approach, called VLP, to extract a series of dominant subspaces of variable lengths from the whole visual feature space without the constraint of dimension consecutiveness. A stable visual dictionary is built by clustering the video k...
With the explosion of video data, video processing technologies have advanced quickly and been appli...
This is a high level computer vision paper, which employs concepts from Natural Language Understandi...
We consider the problem of extracting descriptors that represent visually salient portions of a vide...
Efficiently and effectively identifying similar videos is an important and nontrivial problem in con...
We propose a subspace symbolization approach, namely SUDS, for content-based search on very large vi...
We propose a subspace symbolization approach, namely SUDS, for content-based search on very large vi...
Efficiently and effectively identifying similar videos is an important and nontrivial problem in con...
The approach of using bag-of-words (BoW) or variants is ubiquitous in computer vision and related fi...
The unprecedented increase in the generation and dissemination of video data has created an urgent d...
In this paper, we propose a novel Spatio-Temporal Analysis and Retrieval model to extract attributes...
The unprecedented increase in the generation and dissemination of video data has created an urgent d...
This paper presents a novel match-and-tiling approach to retrieve video sequences. The approach cons...
© 2017 Association for Computing Machinery. Subspace representations have been widely applied for vi...
[[abstract]]Many multimedia applications, such as the World-Wide-Web (WWW), video-on-demand (VOD), a...
Content-based event retrieval in unconstrained web videos, based on query tags, is a hard problem du...
With the explosion of video data, video processing technologies have advanced quickly and been appli...
This is a high level computer vision paper, which employs concepts from Natural Language Understandi...
We consider the problem of extracting descriptors that represent visually salient portions of a vide...
Efficiently and effectively identifying similar videos is an important and nontrivial problem in con...
We propose a subspace symbolization approach, namely SUDS, for content-based search on very large vi...
We propose a subspace symbolization approach, namely SUDS, for content-based search on very large vi...
Efficiently and effectively identifying similar videos is an important and nontrivial problem in con...
The approach of using bag-of-words (BoW) or variants is ubiquitous in computer vision and related fi...
The unprecedented increase in the generation and dissemination of video data has created an urgent d...
In this paper, we propose a novel Spatio-Temporal Analysis and Retrieval model to extract attributes...
The unprecedented increase in the generation and dissemination of video data has created an urgent d...
This paper presents a novel match-and-tiling approach to retrieve video sequences. The approach cons...
© 2017 Association for Computing Machinery. Subspace representations have been widely applied for vi...
[[abstract]]Many multimedia applications, such as the World-Wide-Web (WWW), video-on-demand (VOD), a...
Content-based event retrieval in unconstrained web videos, based on query tags, is a hard problem du...
With the explosion of video data, video processing technologies have advanced quickly and been appli...
This is a high level computer vision paper, which employs concepts from Natural Language Understandi...
We consider the problem of extracting descriptors that represent visually salient portions of a vide...