Abstract:
To act intelligently in dynamic environments, a system must understand the current situation it is involved in at any given time. This requires dealing with temporal cont...Show MoreMetadata
Abstract:
To act intelligently in dynamic environments, a system must understand the current situation it is involved in at any given time. This requires dealing with temporal context, handling multiple and ambiguous interpretations, and accounting for various sources of uncertainty. In this paper we propose a probabilistic approach to modeling and recognizing situations. We define a situation as a distribution over sequences of states that have some meaningful interpretation. Each situation is characterized by an individual hidden Markov model that describes the corresponding distribution. In particular, we consider typical traffic scenarios and describe how our framework can be used to model and track different situations while they are evolving. The approach was evaluated experimentally in vehicular traffic scenarios using real and simulated data. The results show that our system is able to recognize and track multiple situation instances in parallel and make sensible decisions between competing hypotheses. Additionally, we show that our models can be used for predicting the position of the tracked vehicles.
Date of Conference: 12-17 May 2009
Date Added to IEEE Xplore: 06 July 2009
ISBN Information:
Print ISSN: 1050-4729
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- IEEE Keywords
- Index Terms
- Traffic Flow ,
- Traffic Scenarios ,
- Recognition Of Situations ,
- Dynamic Environment ,
- Hidden Markov Model ,
- Individual Models ,
- Meaningful Interpretation ,
- Sequence Of States ,
- Temporal Context ,
- Various Sources Of Uncertainty ,
- Time And Space ,
- Training Data ,
- System State ,
- Sequence Length ,
- Modeling Framework ,
- State Space ,
- Transition Probabilities ,
- State-space Model ,
- Model-based Approach ,
- Goal Of Experiment ,
- Situation Model ,
- Posterior Odds ,
- Dynamic Bayesian Network ,
- Online Fashion ,
- Propositional Logic ,
- Bottom Plot ,
- Forward Procedure ,
- Recognition Framework ,
- Abstraction Layer
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Traffic Flow ,
- Traffic Scenarios ,
- Recognition Of Situations ,
- Dynamic Environment ,
- Hidden Markov Model ,
- Individual Models ,
- Meaningful Interpretation ,
- Sequence Of States ,
- Temporal Context ,
- Various Sources Of Uncertainty ,
- Time And Space ,
- Training Data ,
- System State ,
- Sequence Length ,
- Modeling Framework ,
- State Space ,
- Transition Probabilities ,
- State-space Model ,
- Model-based Approach ,
- Goal Of Experiment ,
- Situation Model ,
- Posterior Odds ,
- Dynamic Bayesian Network ,
- Online Fashion ,
- Propositional Logic ,
- Bottom Plot ,
- Forward Procedure ,
- Recognition Framework ,
- Abstraction Layer