Automatic situational analysis in video surveillance enables smart and exhaustive observation of what is happening in a scene. In real world applications there arise special challenges concerning imperfect input data and real-time processing requirements. In this paper a hierarchical and distributed architecture tackling situation analysis in the real world is introduced, described, and exemplarily evaluated. The architecture introduced is hierarchically and modularly structured. The low-level data acquisition and processing is encapsulated in self-contained building blocks. These modules include video acquisition, sensor feedback and control, person detection and tracking, and vehicle identification. High level situation analysis is provid...
Semiautomatic approaches are developed for wide area situation assessment in near-real-time. The two...
Interaction analysis is defined as the generation of situation descriptions from machine perception....
International audienceThis paper addresses the problem of automatically acquiring context models fro...
In surveillance applications human operators are either confronted with a high cognitive load or mon...
This contribution aims at assisting video surveillance operators with automatic understanding of sit...
Observing public spaces like car parks, airports, and train stations via video surveillance is an ex...
Humans make decisions on the basis of their situation awareness and it is well-known that insufficie...
Technological advances in communication and computing coupled with low costs of sensors have enabled...
Situation awareness is introduced as a more holistic variant of context awareness where situations a...
The integration of cognitive capabilities in computer vision systems requires both to enable high s...
Combining appropriate methods from computer vision and artificial intelligence enables further progr...
Automatically determining the situation of an ad-hoc group of people and devices within a smart envi...
In today's surveillance systems, there is a need for enhancing the situation awareness of an operato...
Abstract. This paper addresses the problem of automatic behavior un-derstanding in smart environment...
Fuzzy metric temporal logic (FMTL) and situation graph trees (SGTs) have been shown to be promising ...
Semiautomatic approaches are developed for wide area situation assessment in near-real-time. The two...
Interaction analysis is defined as the generation of situation descriptions from machine perception....
International audienceThis paper addresses the problem of automatically acquiring context models fro...
In surveillance applications human operators are either confronted with a high cognitive load or mon...
This contribution aims at assisting video surveillance operators with automatic understanding of sit...
Observing public spaces like car parks, airports, and train stations via video surveillance is an ex...
Humans make decisions on the basis of their situation awareness and it is well-known that insufficie...
Technological advances in communication and computing coupled with low costs of sensors have enabled...
Situation awareness is introduced as a more holistic variant of context awareness where situations a...
The integration of cognitive capabilities in computer vision systems requires both to enable high s...
Combining appropriate methods from computer vision and artificial intelligence enables further progr...
Automatically determining the situation of an ad-hoc group of people and devices within a smart envi...
In today's surveillance systems, there is a need for enhancing the situation awareness of an operato...
Abstract. This paper addresses the problem of automatic behavior un-derstanding in smart environment...
Fuzzy metric temporal logic (FMTL) and situation graph trees (SGTs) have been shown to be promising ...
Semiautomatic approaches are developed for wide area situation assessment in near-real-time. The two...
Interaction analysis is defined as the generation of situation descriptions from machine perception....
International audienceThis paper addresses the problem of automatically acquiring context models fro...