Interaction-Aware Probabilistic Behavior Prediction in Urban Environments
Autor: | Constantin Hubmann, Jens Schulz, Darius Burschka, Julian Lochner |
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Rok vydání: | 2018 |
Předmět: |
FOS: Computer and information sciences
0209 industrial biotechnology Computer Science - Artificial Intelligence Inference Markov process 02 engineering and technology Machine learning computer.software_genre Set (abstract data type) symbols.namesake Computer Science - Robotics 020901 industrial engineering & automation 0502 economics and business Hidden Markov model Dynamic Bayesian network 050210 logistics & transportation business.industry 05 social sciences Probabilistic logic Artificial Intelligence (cs.AI) Trajectory symbols Artificial intelligence Particle filter business computer Robotics (cs.RO) |
Zdroj: | IROS |
DOI: | 10.48550/arxiv.1804.10467 |
Popis: | Planning for autonomous driving in complex, urban scenarios requires accurate prediction of the trajectories of surrounding traffic participants. Their future behavior depends on their route intentions, the road-geometry, traffic rules and mutual interaction, resulting in interdependencies between their trajectories. We present a probabilistic prediction framework based on a dynamic Bayesian network, which represents the state of the complete scene including all agents and respects the aforementioned dependencies. We propose Markovian, context-dependent motion models to define the interaction-aware behavior of drivers. At first, the state of the dynamic Bayesian network is estimated over time by tracking the single agents via sequential Monte Carlo inference. Secondly, we perform a probabilistic forward simulation of the network's estimated belief state to generate the different combinatorial scene developments. This provides the corresponding trajectories for the set of possible, future scenes. Our framework can handle various road layouts and number of traffic participants. We evaluate the approach in online simulations and real-world scenarios. It is shown that our interaction-aware prediction outperforms interaction-unaware physics- and map-based approaches. Comment: Accepted paper at IEEE IROS 2018. $\copyright$ 2018 IEEE |
Databáze: | OpenAIRE |
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