Indexing video data is essential for providing content based access. In this paper, we consider how database technology can offer an integrated framework for modeling and querying video data. As many concerns in video (e.g., modeling and querying) are also found in databases, databases provide an interesting angle to attack many of the problems. From a video applications perspective, database systems provide a nice basis for future video systems. More generally, database research will provide solutions to many video issues even if these are partial or fragmented. From a database perspective, video applications provide beautiful challenges. Next generation database systems will need to provide support for multimedia data (e.g., image, video, audio). These data types require new techniques for their management (i.e., storing, modeling, querying, etc.). Hence new solutions are significant. This paper develops a data model and a rule-based query language for video content based indexing and retrieval. The data model is designed around the object and constraint paradigms. A video sequence is split into a set of fragments. Each fragment can be analyzed to extract the information (i.e., symbolic descriptions) of interest that can be put into a database. This database can then be searched to find information of interest. Two types of information are considered: (1) the entities (i.e., objects) of interest in
|
546
|
MPEG: a video compression standard for multimedia applications
– Gall
- 1991
|
|
441
|
The QBIC Project: Querying Images by Content Using Color, Texture, and Shape,”Proc. Storage and Retrievalfor Image and Video
– Niblack
- 1993
|
|
158
|
Ovid: Design and implementation of a video-object database system
– Oomoto, Tanaka
- 1993
|
|
139
|
A Video Compression Standard for Multimedia Applications
– Gall
- 1991
|
|
93
|
Definite relations over constraint languages
– Hohfeld, Smolka
- 1988
|
|
92
|
Principles of Multimedia Database Systems
– Subrahmanian
- 1998
|
|
64
|
Modelling and Querying Video Data
– Hjelsvold, Midtstraum
- 1994
|
|
56
|
A logic for object-oriented logic programming (Maier's O-Logic revisited
– Kifer, Wu
- 1989
|
|
51
|
Virtual Video Editing in Interactive Multimedia Applications
– Mackay, Davenport
- 1989
|
|
50
|
PICQUERY: A High Level Query Language for Pictorial Database Management
– Joseph, Cardenas
- 1988
|
|
48
|
Query by visual example
– HIRATA, KATO
- 1992
|
|
45
|
The stratification system: A design environment for random access video
– Smith, Davenport
- 1992
|
|
39
|
Linear constraint databases
– Grumbach, Su, et al.
- 1995
|
|
37
|
A video retrieval and sequencing system
– Chua, Ruan
- 1995
|
|
37
|
Indexing in video databases
– Hampapur, Jain, et al.
- 1995
|
|
33
|
The advanced Video information system: Data structures and Query processing,” Multimedia systems
– Adali, Candan, et al.
- 1996
|
|
30
|
Parsing movies in context
– Smith, Pincever
- 1991
|
|
30
|
Constraint objects
– Srivastava, Ramakrishnan, et al.
- 1994
|
|
30
|
IRIS hypermedia services
– Haan, Kahn, et al.
- 1992
|
|
28
|
Relational Specifications of Infinite Query Answers
– Chomicki, Imielinski
- 1989
|
|
28
|
The LyriC language: Querying constraint objects
– Brodsky, Kornatzky
- 1995
|
|
28
|
Sequences, Datalog and transducers
– Mecca, Bonner
- 1995
|
|
27
|
Solving systems of set constraints (extended abstract
– Aiken, Wimmers
- 1992
|
|
26
|
G-Log: A Declarative Graphical Query Language
– Paredaens, Peelman, et al.
- 1991
|
|
24
|
A three-dimensional iconic environment for image database querying
– Bimbo, Campanai, et al.
- 1993
|
|
23
|
Picture Query Languages for Pictorial Data-Base Systems
– Chang, Fu
- 1981
|
|
23
|
Linear constraint query languages: Expressive power and complexity
– Grumbach, Su, et al.
- 1994
|
|
21
|
Datalog queries of set constraint databases
– Revesz
- 1995
|
|
20
|
Video query formulation
– Ahanger, Benson, et al.
- 1995
|
|
16
|
Jacob : Just a content-based query system for video databases
– Cascia, Ardizzone
- 1996
|
|
15
|
Video handling based on structured information for hypermedia systems
– Tonomura
- 1991
|
|
12
|
vs. Interval-based Query Languages for Temporal Databases
– Point
- 1996
|
|
8
|
VIOLONE: Video Retrieval By Motion Example
– Yoshitaka, Hosoda, et al.
- 1996
|
|
7
|
An experimental video database management system based on advanced object-oriented techniques
– Huang, Lee, et al.
- 1996
|
|
6
|
The Myth of Semantic Video Retrieval
– Dimitrova
- 1995
|
|
4
|
Towards a Logical Reconstruction of Image Retrieval
– Meghini
- 1996
|
|
4
|
Modeling and querying video data: A hybrid approach
– Decleir, Hacid, et al.
- 1998
|
|
3
|
Special issue in video information systems
– TOIS
- 1995
|
|
3
|
An Object-Oriented Multimedia Database System with Versioning and ContentBased Retrieval
– Arndt, Guercio
- 1995
|
|
3
|
Tomasz Imieli'nski. Relational specifications of infinite query answers
– Chomicki
- 1989
|
|
2
|
The mpeg compression algorithm: a review
– Gall
- 1991
|
|
1
|
Modeling and querying video databases
– Decleir, Hacid, et al.
- 1998
|
|
1
|
Rangachar Kasturi. A semiautomatic video database system
– Devadiga, Kosiba, et al.
- 1995
|
|
1
|
The mpeg compression algorithm: a review
– Gall
- 1991
|